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Volume 19, Number 1 – March 2017
C h i n a A c c o u n t i n g a n d F i n a n c e R e v i e w
中 国 会 计 与 财 务 研 究
2017 年 3 月 第 19 卷 第 1 期
Institutional Environment, Deregulation, and Market Reaction to Listed Private Firms * Qingyuan Li, Shu Zeng, Yue Zou, Hongjian Wang, and Ying Hao1
Received 15th of January 2014 Accepted 14th of June 2016
© The Author(s) 2017. This article is published with open access by The Hong Kong Polytechnic University.
Abstract On the basis of the theoretical explanation that the institutional environment has an impact on firm value, we use an event study to examine the market reaction to listed private firms as a result of the promulgation of the Opinions of the State Council on Encouraging, Supporting and Guiding the Development of the Individual, Private and Other Non-public Sectors of the Economy (2005) and the factors that influence the market reaction. The results indicate that (1) market reactions are significantly positive, as shown by the stock prices of listed private firms around the promulgation date; (2) the stock prices of listed private firms which have entered the regulated monopoly industries react positively in the short term to a larger extent than the stock prices of listed private firms which have not entered those industries; (3) in regions with a strong institutional environment, political connections bring extra positive market reactions to listed private firms which have entered the regulated monopoly industries; however, this effect is not observed in regions with a weak institutional environment. Overall, our findings provide useful information for understanding the impact of market forces and industry regulation on the performance of listed private firms from an institutional perspective and also provide empirical evidence that different institutional factors can affect firm value at different levels.
Keywords: Deregulation, Market Reaction, Listed Private Firms, Political Connections * This paper has been supported by the National Natural Science Foundation of China (Project Nos.
71232004, 71272228, 71672129, and 71602069), Major Research Projects in Philosophy and Social Science Research of the Ministry of Education (Project No. 10JZD0019), New Century Excellent Talents of the Ministry of Education (Project No. NECT-120432), and Graduate Students Research Projects of Wuhan University (2013). We would like to thank the anonymous reviewer, Prof. Xing Liu, Prof. Kangtao Ye, Prof. Pingui Rao, Prof. Hualin Wan, and Prof. Sihai Li for their valuable comments and suggestions. All remaining errors are ours alone.
1 Qingyuan Li, Professor, Economics and Management School of Wuhan University; email: qyli@whu.edu.cn. Shu Zeng, PhD student, Economics and Management School of Wuhan University. Yue Zou, Hubei Radio and Television Station. Hongjian Wang, Lecturer, Management School of Jinan University. Ying Hao, Professor, Economics and Business Administration of Chongqing University.
2 Li, Zeng, Zou, Wang, and Hao
I. Introduction
The relationship between the government and the market is not only an important
proposition of economic development but also the institutional environment and constraint
that firms must face. From the perspective of China’s economic reform, the introduction of
market reform and the market competition mechanism has been an important institutional
arrangement that drives economic growth along the continuous and progressive path of the
reform (Lin and Liu, 2000; Wang et al., 2007). After more than 30 years of high-speed
growth, the Chinese economy has come to a new breakthrough point: the micro foundation
of the growth model is facing dual challenges in industry and structure. Some shortcomings
have become prominent: for example, state-owned firms lack motivations to maintain
success and reform; private firm development has slowed down and lacks institutional
support; redundant constructions; the upgrading of the industrial structure has slowed down
(Yi and Lin, 2003; Economic Growth Frontier Subject Team, 2005; Yang, 2006). Therefore,
to stimulate economic growth and promote economic restructuring and structural
optimisation, it is important to understand the conduction mechanism between market
competition, industry regulation, and the development of private firms.
Because of the emphasis on path dependence and progressive reform in the process of
economic transition, the Chinese government has used administrative regulation to control
industries that are related to the national economic lifeline. In order to restrict competition
and support the development of certain industries, the government enforces strict access
controls on some regulated monopoly industries to form entry barriers and prevent firms
that are outside the state-owned system from entering the market (Xu, 2011). In addition, in
2004, the government issued the State Council’s Decision on Reform of Investment System
and its annexes The Government Approved Investment Projects Catalogue and the National
Development and Reform Commission promulgated the Interim Procedures of Firm
Investment Projects Approval to regulate certain industries through approval procedures and
industry entry restrictions. The introduction of these policies has supported the development
of these industries to a certain extent, cultivated the establishment of a series of large firms,
and enhanced the competitiveness of these industries. However, as Rawski (2002) points out,
the investment system is the decisive factor of Chinese economic growth, and an investment
decision mechanism designed on the basis of ownership and industry discrimination will
probably be the main factor that stunts the rapid growth of the Chinese economy in the
future.
In order to further promote the reform and development of the market economy, the
barriers to entering regulated monopoly industries, such as the so-called “spring door” and
“glass door” phenomena, must be eliminated. On 22 March 2016, the Central Leading Team
for Comprehensively Deepening Reform approved the Opinion on Deepening Investment
Institutional Environment, Deregulation, and Market Reaction 3
and Financing System Reform. This Opinion emphasises that in order to deepen the
investment and financing system reform, the government must establish the dominant
position of firm investment, treat all types of investment body equally, and relax social
investment. It should also improve the government investment system, effectively guide and
amplify government investment, and improve the cooperation model of government and
social capital to broaden the funding sources of investment projects and fully tap the social
capital potential. Moreover, the Opinion clearly defines the important role of social
investment in deepening the reform. In fact, the Chinese government has long been aware of
the potential harm of monopoly in industrial development and has introduced a series of
policies to reduce the barriers in order to allow private firms to enter the regulated
monopoly industries. The first policy is the Opinions of the State Council on Encouraging,
Supporting and Guiding the Development of the Individual, Private and Other Non-public
Sectors of the Economy announced on 19 February 2005 (hereinafter referred to as the
“Opinions (2005)”). Opinions (2005) firstly and clearly puts forward the implementation of
the principle of equal access and fair treatment and deregulated market access for the
non-public sector of the economy. The introduction of this policy represents a milestone,
and it has been followed by the continuous improvement and implementation of policies
that aim to alleviate restrictions on private firms entering the fields of resource monopoly
and public service. The State Council further promulgated the Opinions of the State Council
on Encouraging and Guiding the Healthy Development of Private Investment on 7 May
2010 and released the Work Distribution Notice of the General Office of the State Council
on Encouraging and Guiding the Healthy Development of Private Investment on 22 July
2010. In order to implement these policies, the National Development and Reform
Commission convened 45 departments and held a meeting to discuss implementation details
on 21 February 2012. The introduction of these documents provides an institutional
guarantee for mitigating industry restrictions and encouraging private capital to enter the
regulated monopoly industries and lays a new foundation for the stable and healthy
development of China’s national economy. Since then, various departments have
promulgated specific industrial policies to alleviate monopoly regulation. As a historical
landmark of institutional design, Opinions (2005) is not only the first policy document
aimed at promoting the development of the non-public sector of the economy since the
founding of New China: it has also been of strategic importance to the development of
private firms in the past 10 years.2 Therefore, does the promulgation of Opinions (2005)
increase the value of private firms since it alleviates restrictions on private firms entering
regulated monopoly industries? What factors will affect private firms entering regulated
2 Source: The analysis report issued by the All-China Federation of Industry and Commerce (ACFIC). This
report analyses surveys on the Opinions of the State Council on Encouraging and Guiding the Healthy Development of Private Investment. http://www.sdpc.gov.cn/fgyzjj/t20050930_44473.htm, 2005/09/30.
4 Li, Zeng, Zou, Wang, and Hao
monopoly industries, thereby affecting the value of these firms? There is an urgent need to
answer these questions both in theory and in practice. Therefore, we use the promulgation of
Opinions (2005) as an event to study the correlation between entry into regulated monopoly
industries and the value of private firms and its influencing factors by utilising a simplified
equilibrium model. At the same time, because reaction to the promulgation of Opinions
(2005) may vary between firms, this allows researchers to better carry out cross-sectional
and comparative static tests and reduce the influence of endogeneity and firm heterogeneity
on a cross-sectional regression (Sefcik and Thompson, 1986; Angrist and Krueger, 2001).
The results indicate that (1) market reactions are significantly positive, as shown by the
stock prices of listed private firms around the promulgation date; (2) the stock prices of
listed private firms which have entered the regulated monopoly industries react positively to
a larger extent than the stock prices of listed private firms which have not entered those
industries; (3) in regions with a strong institutional environment, political connections bring
an extra positive market reaction to listed private firms which have entered the regulated
monopoly industries; however, this effect is not observed in regions with a weak
institutional environment. Overall, our findings provide useful information for
understanding the impact of market forces and industry regulation on the performance of
listed private firms from an institutional perspective and also provide empirical evidence
that different institutional factors can affect firm value at different levels.
Opinions (2005) is the first policy document aiming to promote the development of the
non-public sector of the economy since the founding of New China, and it is still
theoretically and practically important to study Opinions (2005) at the present stage of
further deepening economic reform in China. The contribution of this paper is mainly
reflected in the following: (1) Using the promulgation of Opinions (2005) as a quasi-natural
experiment, we empirically test whether it increases the value of private firms. The results
suggest that entry into a regulated monopoly industry would increase the short-term market
value of private firms. Our study not only mitigates the influence of endogeneity and firm
heterogeneity on cross-sectional regression but also further enriches and expands the
research on how the institutional environment affects firm value. (2) Taking the regional
institutional environment into consideration, this paper examines the effect of political
connections in the process of deregulation on the short-term market value of private firms
which have entered regulated monopoly industries and those which have not. The results
suggest that the economic function of private firms’ political connections varies with their
regional institutional environment, prove that different institutional factors influence firm
value at different levels, and add new connotations to the research on firm efficiency under
the framework of new institutional economics.
Institutional Environment, Deregulation, and Market Reaction 5
II. Institutional Background and Hypothesis Development
Electricity, railways, oil, tobacco, finance, steel, and other regulated monopoly
industries have become a synonym for low efficiency, and scholars have studied the low
efficiency and economic losses caused by administrative monopoly. Abed and Davoodi
(2000) believe that in an institutional environment that lies between a market economy and a
planned economy, administrative monopoly may lead to monopoly firms and individuals
who possess public power seeking rent, hence leading to corruption, the suppression of
competition, and the distortion of resource allocation. According to Guo and Hu (2003),
Jiang and Yu (2007), Yan and Wang (2009), and Yu and Zhang (2010), administrative
monopoly will lead to higher market prices; therefore, the incumbent firms can obtain
excess profits without technological innovation. This not only causes a serious loss of
efficiency but also restricts technological innovation and the enhancement of the industrial
competitiveness of Chinese firms. In addition, administrative monopoly also grants the
administrative authorities the legal authority to control market access, and that leads to
serious corruption and a large amount of underground economic activities (Djankov et al.,
2002).
Although state-owned monopoly firms are characterised as highly profitable but with
low efficiency and weak innovation, they dominate the Chinese national economy. Since the
reform and opening up, the private economy has grown into an important part of Chinese
economy in the past 35 years, and many outstanding private firms with large capital,
advanced technology, and managerial expertise have emerged, such as Alibaba, Huawei,
Baidu, Jiangsu Shagang, Suning Appliance, and the Wanda Group. Although Chinese
private firms have developed considerably, they are mainly concentrated in competitive
industries and rarely have access to regulated monopoly industries (Chen et al., 2008).
Therefore, due to intensive competition, private firms have a strong motivation to enter
regulated monopoly industries to seek less competition and more profit. Luo and Liu (2009)
find that the performance of listed private firms which have access to regulated monopoly
industries is significantly better than that of those which have no access to such industries,
and the performance is positively correlated with the degree of access. Hence, if the market
expects that the promulgation of Opinions (2005) could allow private firms to enter
regulated monopoly industries without restrictions, there will be positive market reactions
towards listed private firms. However, Opinions (2005) neither specifies the access scope
nor broadens the manner of private investment and hence makes some of the policies in the
document vague to interpret, thereby making it possible for local governments and some
departments to set up all kinds of barriers to keep private investment out of regulated
monopoly industries when these policies are implemented.3 A survey has found that there
3 Lihui Li and Jie Ouyang, “Private Firms are Being Squeezed in Some Regions and Sectors”, People’s
Daily, 26 October 2009.
6 Li, Zeng, Zou, Wang, and Hao
are more than 80 industries in the Chinese economy, out of which 62 allow foreign capital to
enter but only 41 allow private capital to enter. The proportion of private investment in
traditional regulated monopoly industries and fields is still very small.4 Therefore, if market
investors expect that moral hazards may exist in the implementation of Opinions (2005) as
authorities at subordinate levels may find their own ways to get around the policies issued
by the government, the promulgation of Opinions (2005) will not cause a positive market
response towards listed private firms.
In this paper, we use the promulgation of Opinions (2005) on 19 February 2005 as an
event to study the impact of access deregulation on the market reaction to listed private
firms. If investors believe that the promulgation of Opinions (2005) will help private firms
to enter regulated monopoly industries and increase their value, the listed private firms will
have a higher positive cumulative abnormal return during the event. On the other hand, if
investors believe that the promulgation of this policy cannot essentially alleviate the
restriction of market access for private firms, the market reaction to listed private firms
would be insignificant or even negative. Thus, we develop our first hypothesis as follows:
H1: If investors anticipate that the promulgation of Opinions (2005) can
essentially alleviate the restriction of market access for private firms, market reaction
to listed private firms will be significantly positive during the event, as shown by their
stock prices; otherwise, market reaction will be insignificant or even negative.
A Chinese private firm may encounter two types of barriers when it tries to enter a
regulated monopoly industry. The first barrier is the phenomenon of the “glass door”, which
means that private firms cannot enter certain industries because of obstacles set by the
relevant departments, although there is no law explicitly prohibiting private firms from
entering these industries. The second barrier is the phenomenon of the “spring door”, which
means that private firms are forced out of certain industries by some rigid policies shortly
after they set foot in those industries. Although the promulgation of Opinions (2005) cannot
completely eliminate these two phenomena, it can partially alleviate these two problems
because it serves as policy guidance from the Chinese Central Government. In recent years,
with the reform of the market, some government-regulated industries have gradually opened
up to private investment, and according to the statistics, 19.3% of listed private firms have
entered regulated monopoly industries. These firms have overcome the glass door barrier,
but the threat of the spring door still exists; hence, the promulgation of Opinions (2005) is
good news for them. According to the theory of entrepreneurial orientation, earlier entrants
4 The press conference held by the director of the National Development and Reform Commission on
Opinions of the State Council on Encouraging and Guiding the Healthy Development of Private Investment. Caijing.com, 14 May 2010.
Institutional Environment, Deregulation, and Market Reaction 7
are more likely to gain the first-mover advantages and have better performance (Du et al.,
2008). Also, earlier entrants are more likely to gain first-mover advantages in terms of
technologies, resources, brands, culture, experience, and market (Miller and Friesen, 1983;
Lumpkin and Dess, 1996; Lieberman and Montgomery, 1998); hence, they create entry
barriers for later entrants and help themselves maintain a higher return. Obviously,
compared to listed private firms which have not entered regulated monopoly industries,
those firms that have entered a regulated monopoly industry are expected to have better
performance. Additionally, the promulgation of Opinions (2005) eliminates the glass door
problems for private firms which have not yet entered the regulated monopoly industries
and may create a competitive effect on private firms which have entered regulated
monopoly industries. Also, compared to earlier entrants, later entrants may have
late-developing advantages, such as free ride, and less uncertainty, achieved by observing
the actions and effects of earlier entrants, and hence they achieve better operating
performance (Lieberman and Montgomery, 1998) and create competition effects for earlier
entrants. So, which effect does the market anticipate will prevail, the first-mover advantages
or the competition effect (late-developing advantages)? It comes down to an empirical
question for our research. If the effect of the first-mover advantages prevails, listed private
firms which have entered regulated monopoly industries will have a larger positive market
reaction. If the competition effect prevails, listed private firms which have not yet entered
regulated monopoly industries will have a larger positive market reaction. Thus, we develop
two alternative hypotheses as follows:
H2a: Compared to listed private firms which have not yet entered regulated
monopoly industries, listed private firms which have entered regulated monopoly
industries have larger positive short-term stock price reactions upon the promulgation
of Opinions (2005).
H2b: Compared to listed private firms which have entered regulated monopoly
industries, listed private firms which have not yet entered regulated monopoly
industries have larger positive short-term stock price reactions upon the promulgation
of Opinions (2005).
III. Research Design
The promulgation of Opinions (2005) affected all the sample firms simultaneously.
When the event date and event windows are identical among sample firms, portfolio
time-series regression can generate unbiased parameter estimates that account fully for
cross-sectional disturbance heteroscedasticity and interdependence (Sefcik and Thompson,
1986). By employing a portfolio time-series regression, Berkman et al. (2010) find that in
8 Li, Zeng, Zou, Wang, and Hao
general the market only experienced a weak positive reaction when the Chinese Securities
Regulatory Commission (CSRC) introduced new regulations aimed at improving minority
shareholder protection. Therefore, we follow Sefcik and Thompson (1986) and Berkman et
al. (2010) and use the portfolio time-series regression model to test H1. Specifically, we
form an equally weighted portfolio of listed private firms and estimate model (1) to examine
whether the portfolio return in the event window is significantly different from the average
return of the portfolio of the entire estimation window. In this paper, if we specify the event
date (12 January 2005) as day 0, then the estimated window is (-199, +10), a period of 210
trading days.5 We select two event windows, a 5-day event window (-2, +2), and an 11-day
event window (-5, +5), both of which are centred on event date 0. The empirical model is as
follows:
ttt EVENTRETURN 10 , (1)
where RETURNt is the return for day t of the equally weighted market portfolio of the
sample listed private firms; EVENTt is a dummy variable that equals 1/n of the dates within
the event window (-2, +2) or (-5, +5) of length n days and 0 otherwise; and t is an
independent and identically distributed random error term for day t. If investors anticipate
that the deregulation can essentially alleviate the restriction of market access for private
firms, 1 will be significantly positive; if investors do not anticipate that the deregulation
can essentially alleviate the restriction of market access for private firms, 1 will be
insignificant or even significantly negative.
Second, for a robustness check, we include the Hang Seng China Enterprises Index
(HSCEI) to control for the change in the macro environment. The promulgation of Opinions
(2005) not only has a positive impact on private firms but also aggravates market
competition, which may result in damage to the interests of state-owned firms, hence
leading to a significant decrease in state-owned firms’ stock returns. Given the fact that
stock prices move simultaneously in Chinese stock markets, systematic risks account for a
big portion of the overall market risks, and the stock prices of listed state-owned firms and
listed private firms interact with each other (Wang and Zhao, 2001). Therefore, we use the
HSCEI instead of the domestic stock index to control for the macro environment. The
HSCEI reflects the performance of large H shares listed on the Hong Kong Stock Exchange.
The stock return of these firms can reflect changes in the macro-economic environment and
will not significantly interact with the stock returns of our sample listed private firms since
they are traded on a different exchange. We employ model (2) for the regression and use the
5 Opinions (2005) was discussed and approved by the Standing Committee of the State Council on 12
January 2005 and was formally promulgated by the State Council on 19 February 2005. Since the main contents of this policy were published on 12 January, we choose this day as the event day.
Institutional Environment, Deregulation, and Market Reaction 9
event window and estimated window that are identical to the ones used in model (1). The
empirical model is as follows:
_ , (2)
where RETURN_HKt is the return for HSCEI on day t and RETURNt, EVENTt, and t are
defined as before.6 If investors anticipate that the deregulation can essentially alleviate the
restriction of market access for private firms, 1 will be significantly positive. If investors
do not anticipate that the deregulation can essentially alleviate the restriction of market
access for private firms, 1 will be insignificant or even significantly negative.
We take two approaches to test H2. The first is still the portfolio time-series regression
model used by Sefcik and Thompson (1986) and Berkman et al. (2010). We implement the
portfolio time-series approach by forming a portfolio long in listed private firms that have
entered regulated monopoly industries and short in private firms that have not entered
regulated monopoly industries. We employ model (3) for the regression and use the event
window and estimated window that are identical to the ones used in model (1). Model (3) is
as follows:
tttMONt RETURNEVENTNONRMONRt
210)(|)( , (3)
where R(MONt) is the return for day t of the equally weighted market portfolio of listed
private firms that have entered regulated monopoly industries; )(tMONNONR is the return
for day t of the equally weighted market portfolio of listed private firms that have not
entered regulated monopoly industries; and 1 gives the estimated difference in the
cumulative abnormal return between the portfolio that has entered regulated monopoly
industries and the portfolio that has not entered regulated monopoly industries during each
event window. If investors anticipate that after the promulgation of Opinions (2005) listed
private firms which have entered monopoly regulated industries will have more advantages
than those which have not, 1 will be significantly positive. If investors anticipate that
after the promulgation of Opinions (2005) listed private firms which have not entered
monopoly regulated industries will have more advantages than those which have, 1 will
be significantly negative.
The second approach is to estimate the cumulative abnormal return of sample firms
during the two event windows and then run an OLS regression on whether a firm has
entered regulated monopoly industries or not using model (4). By employing this method,
Calomiris et al. (2010) find that when the Chinese government announced the privatisation
of state-owned shares, the proportion of state-owned shares was negatively associated with a 6 _ / , where is the price of HSCEI on day t.
10 Li, Zeng, Zou, Wang, and Hao
firm’s cumulative abnormal returns. Li et al. (2010) also employ this method and find that
when the CSRC issued a policy on semi-mandatory dividends, the market reaction was
significantly lower for listed firms which had refinancing plans, high growth, and a low free
cash flow or faced intensive competition and had a low free cash flow. Model (4) is as
follows:
ii XMONCAR , (4)
where CAR is the cumulative abnormal return of the sample firms in the event windows;7
MON is an indication variable set to 1 for firms that have entered regulated monopoly
industries and 0 otherwise; is the estimated differences in the cumulative abnormal
return between firms which have entered regulated monopoly industries and firms which
have not; Xi are control variables; and is a random error term. If investors anticipate that
after the promulgation of Opinions (2005) listed private firms which have entered regulated
monopoly industries will have a more positive market reaction compared to those which
have not due to first-mover advantages, will be significantly positive. If investors
anticipate that after the promulgation of Opinions (2005) listed private firms which have not
entered regulated monopoly industries will have a more positive market reaction compared
to those which have due to competition effects (late-developing advantages), will be
significantly negative.
Following Ayers et al. (2002), Lang et al. (2000), Li et al. (2010), and Calomiris et al.
(2010), we control for firm size (SIZE), leverage (LEV), profitability (ROV), book-to-market
ratio (B/M), risks (BETA), and industry (IND). SIZE is measured as the natural log of total
assets on 31 December 2004. LEV is measured as total liabilities scaled by total market
capitalisation on 31 December 2004. ROV is measured as net profit minus non-recurring
gains and losses, then scaled by total market capitalisation on 31 December 2004. B/M is
measured as book value of equity scaled by market value of equity on 31 December 31 2004.
BETA is a coefficient estimated by regressing individual stock return on stock market return
for 50 trading days preceding 4 January 2005.8 IND is a dummy variable for industry. This
paper employs the code classification of the CSRC, using a two-level code classification for
the manufacturing industry and a one-level code classification for other sectors. In addition,
to avoid the influence of abnormal values, we winsorise all continuous variables at the upper
and lower one per cent tails.
7 We use the CPMA model to calculate the cumulative abnormal return. If we specify the event date (12
January 2005) as day 0, the estimated window is (-210, -31), a period of 180 trading days, and the two event windows are (-2, +2) and (-5, +5). We use daily return with cash dividend reinvested as our rate of return.
8 We choose this day because it is the trading day just before the event window if we use the longer event window (-5, +5).
Institutional Environment, Deregulation, and Market Reaction 11
In the Subsample Tests section, we use model (5) to test the differences in the effect of
political connections on firm value between private firms which have entered regulated
monopoly industries and those which have not. Model (5) is as follows:
ii XPCMONPCMONCAR *3210 , (5)
where CAR is the cumulative abnormal return of the sample firms over the event window
period; MON is an indicator set to 1 for firms that have entered regulated monopoly
industries and 0 otherwise; PC is an indicator set to 1 for firms with political connections
and 0 otherwise; 32 is the estimated differences in the cumulative abnormal return
between firms with political connections and those without political connections among all
the firms which have entered regulated monopoly industries; 2 is the estimated
differences in the cumulative abnormal return between firms with political connections and
those without political connections among all the firms which have not yet entered regulated
monopoly industries; and is a random error term. See Table 1 for detailed definitions of
the variables.
Table 1 Variable Definitions
Variable Variable Definition RETURNt Market Return The return for day t of the equally weighted market
portfolio of sample listed private firms.
EVENTt Event Window A dummy variable equal to 1/n for the dates within the event window (-2, +2) or (-5, +5) of length n days and 0 otherwise.
RETURN_HKt HSCEI Return The return for HSCEI on day t.
CAR (-2, +2) Cumulative Abnormal Return
Cumulative abnormal return of sample firms over the event window (-2, +2).
CAR (-5, +5) Cumulative Abnormal Return
Cumulative abnormal return of sample firms over the event window (-5, +5).
MON Regulated Monopoly Industry Revenue
A dummy variable set to 1 if a firm has revenue from a regulated monopoly industry and 0 otherwise.
PC Political Connections An indicator set to 1 for firms with political connections and 0 otherwise.
SIZE Firm Size The natural log of total assets on 31 December 2004.
LEV Leverage Total liabilities scaled by total market capitalisation on 31 December 2004.
ROV Profitability Net profit minus non-recurring gains and losses, then scaled by total market capitalisation on 21 December 2004.
B/M Book to Market Ratio Book value of equity scaled by market value of equity on 31 December 2004.
BETA Risk Coefficient estimated by regressing individual stock return on stock market return for 50 trading days preceding 4 January 2005.
12 Li, Zeng, Zou, Wang, and Hao
IV. Sample Selection and Data Sources
4.1 Sample Selection
To determine whether a listed firm is privately owned, we use the Chinese Listed
Non-State-Owned Enterprise Database (2010 Edition) provided by China Stock Market and
Accounting Research (CSMAR) database. As shown in this database, there are 694 listed
firms which were once privately owned during the period 2003-2009. Since listed private
firms that were converted from previously state-owned firms have many ties with the latter,
they cannot be considered as purely private firms; moreover, as some listed private firms
have experienced nationalisation in the past, we eliminate these firms from our sample. We
also eliminate firms from the financial sector due to the special nature of the financial
industry. Eventually, we obtain a sample of 223 listed firms that were privately owned at the
time when they launched their initial public offerings and had never been nationalised as at
the end of 2004.
4.2 Definition of Political Connections and Data Sources
Following Calomiris et al. (2010), we manually collect the résumés of executives9
from the website of Sina (finance.sina.com.cn). We construct the measure of political
connections according to whether the firm has at least one senior officer who once served in
the one of following posts in the municipality (county) where the listed firm is located:
government official at bureau director or deputy bureau director level or any higher level
(excluding those who had served the central government); or who once served or is serving
as a deputy to the people’s congress or is a member of the Chinese People’s Political
Consultative Conference (CPPCC) at the municipal or higher level (excluding deputies to
the National People’s Congress or members of CPPCC at the national level).10
4.3 Other Data Sources
1. Definition and data sources of the regulated monopoly industry. We use the
“Catalogue of Investment Projects Subject to the Approval of Government” (2004) as the
source to identify regulated monopoly industries. If a firm has revenue from regulated
monopoly industries according to its notes to the financial statements of the year 2004, the
variable MON is set to 1; otherwise, MON is set to 0.
9 “Executives” in this paper refers to senior management, such as the general manager, deputy general
manager, and chief financial officer, as well to as the chairman and vice chairman of the board of directors. As different ranks of senior management positions are adopted in different listed firms, it is difficult to list all senior management positions. Therefore, we refer to the executive information column listed on Sina Finance and search for executives’ names through Baidu (Baidu.com) to verify the executive’s information or get additional information.
10 When we include officials from the central government or political connections with officers in other municipalities, the regression results are not significant, consistent with the research of Wu et al. (2008) and Fan et al. (2007).
Institutional Environment, Deregulation, and Market Reaction 13
2. Marketisation index data sources. In this paper, we use the average overall score of
the Fan Gang Market Index for each province from 1999 to 2005 to indicate the degree of
marketisation of the province.
V. Empirical Analysis
5.1 Descriptive Statistics and Correlation Coefficient Test
Table 2 reports the sample distribution. Panel A reports the distribution of the sample
firms by their industry. The sample firms are not evenly distributed among industries. Firms
from the machinery, equipment, and instrument industry account for the biggest proportion
(14.80%), followed by comprehensive (13.90%), pharmaceutical and biological products
(12.11%), textiles, clothing, and fur (9.87%), information technology (9.42%), and oil,
chemicals, and plastics (8.97%). There is only one firm in the communication and cultural
industry, and there are no firms in some industries, such as mining and the production and
supply of electricity, gas, and water.
Overall, the percentage for firms with political connections is relatively high, reaching
41.96%. This suggests that almost half of the sample firms have established political
connections by hiring former government officials or individuals running for the position of
people’s congress deputy or CPPCC member. Among the sample firms, the communication
and cultural industry has the highest proportion of firms with political connections (100%).
Industries with relatively high proportions of political connections include traffic and
transportation, warehousing, real estate, and timber and furniture; in all of these industries,
the proportion is 66.67%. Industries with a relatively lower proportion of political
connections include information technology (14.29%), food and beverage (22.22%), and
paper production and printing (25.00%). The statistics suggest that industries with a lower
proportion of political connections are highly competitive. In addition, 19.3% of the sample
firms have entered a regulated monopoly industry.
Panel B of Table 2 reports the distribution of the sample firms by their region. Zhejiang,
Guangdong, Jiangsu, and Shanghai occupy the top four positions, with 41, 31, 23, and 21
listed private firms, respectively, and they collectively account for more than 50% of the
total sample. Sichuan, Shandong, Fujian, and Hubei are in the second tier, with 11, 11, 10,
and 10 listed private firms, respectively. The number of listed private firms from each of
remaining provinces is not greater than 10. Guizhou, Qinghai, Shanxi, and Tianjin have the
least number of listed private firms, each having only one listed private firm. The provinces
with the highest marketisation scores are Guangdong, Zhejiang, Shanghai, Fujian, and
Jiangsu, and the provinces with the lowest scores are Qinghai, Gansu, Guizhou, and
Xinjiang. The provinces with the highest percentage of political connections are Qinghai,
Shanxi, Tianjin, and Tibet (100%), and the provinces with the lowest percentage of political
14 Li, Zeng, Zou, Wang, and Hao
connections are Chongqing, Hainan, Hebei, Guizhou, and Gansu (0.00%).
Table 2 Sample Distribution
Panel A: Distribution of Sample Firms and Their Political Connections by Industry Industry Number of
firms % of total Number of firms with
political connections % of firms with
political connections
Agriculture, Forestry, and Fishing (A)
6 2.69% 3 50.00%
Food and Beverage (C0)
9 4.04% 2 22.22%
Textiles, Clothing, and Fur (C1)
22 9.87% 8 36.36%
Timber and Furniture (C2)
3 1.35% 2 66.67%
Paper Production and Printing (C3)
4 1.79% 1 25.00%
Oil, Chemicals, and Plastics (C4)
20 8.97% 11 55.00%
Electronics (C5) 10 4.48% 5 50.00%
Metals and Non-metals (C6)
12 5.38% 7 58.33%
Machinery, Equipment, and Instrument (C7)
33 14.80% 13 39.39%
Pharmaceutical and Biological Products (C8)
27 12.11% 10 40.74%
Other Manufacturing (C99)
2 0.90% 1 50.00%
Construction (E) 5 2.24% 2 40.00%
Traffic, Transportation, and Warehousing (F)
3 1.35% 2 66.67%
Information Technology (G)
21 9.42% 3 14.29%
Retail and Wholesale (H)
6 2.69% 3 50.00%
Real Estate (J) 6 2.69% 4 66.67%
Services (K) 2 0.90% 1 50.00%
Communication and Cultural (L)
1 0.45% 1 100.00%
Comprehensive (M) 31 13.90% 13 41.94%
Total 223 100.00% 92 41.96%
Institutional Environment, Deregulation, and Market Reaction 15
Panel B: Market Index and Distribution of Politically Connected Firms by Region Region Market Index Number of
firms % of total Number of
firms with political
connections
% of firms with
political connections
Anhui 5.83 3 1.35% 1 33.33% Beijing 7.26 7 3.14% 2 28.57% Fujian 8.13 10 4.48% 2 20.00% Gansu 3.98 2 0.90% 0 0.00% Guangdong 9.20 31 13.90% 13 41.94% Guangxi 5.39 3 1.35% 1 33.33% Guizhou 4.02 1 0.45% 0 0.00% Hainan 5.66 6 2.69% 0 0.00% Hebei 6.13 2 0.90% 0 0.00% Henan 5.52 5 2.24% 4 80.00% Heilongjiang 4.71 6 2.69% 3 50.00% Hubei 5.63 10 4.48% 4 40.00% Hunan 5.56 5 2.24% 1 20.00% Jilin 5.09 3 1.35% 1 33.33% Jiangsu 7.97 23 10.31% 9 39.13% Liaoning 6.59 3 1.35% 2 66.67% Qinghai 3.08 1 0.45% 1 100.00% Shandong 7.00 11 4.93% 5 45.45% Shanxi 4.74 1 0.45% 1 100.00% Shaanxi 4.39 4 1.79% 2 50.00% Shanghai 8.52 21 9.42% 8 38.10% Sichuan 5.94 11 4.93% 6 54.55% Tianjin 7.23 1 0.45% 1 100.00% Tibet11 3 1.35% 3 100.00% Xinjiang 4.05 6 2.69% 1 16.67% Zhejiang 8.92 41 18.39% 21 51.22% Chongqing 6.34 3 1.35% 0 0.00% Total 223 100.00% 92 41.26% Number of firms that have entered regulatedmonopoly industries
43 % of total 18.45%
Table 3 reports the correlation coefficient between the dependent and tested variables.
The correlation coefficient between CAR and PC is negative at a significance level of 1%
for both windows (-2, +2) and (-5, +5), and that means political connections will reduce the
cumulative abnormal return of listed private firms during the event window. We interpret
this as preliminary evidence that promulgation of Opinions (2005) reduces the legal entry
barriers of regulated monopoly industries and hence reduces the value of political
connections for listed private firms because the benefit of using political connections to gain
11 Data of Tibet are not available.
16 Li, Zeng, Zou, Wang, and Hao
access to regulated monopoly industries has weakened. The correlation coefficient between
CAR and MON is positive at a significance level of 1% for window (-2, +2) and 5% for
window (-5, +5), and that means that cumulative abnormal returns are higher for listed
private firms which have entered regulated monopoly industries. We interpret this as
preliminary evidence that the first-mover advantage effect dominates the competition effect;
hence listed private firms which have entered regulated monopoly industries have better
performance. However, this analysis only covers the correlation coefficient between two
single variables, without controlling for the effects of other factors. Therefore, we need to
perform a more reliable regression analysis that controls for these factors as well.
Table 3 Correlation Coefficient Analysis
CAR (-2, +2) CAR (-5, +5) PC MON SIZE LEV ROV B/M
PC -0.190*** -0.178*** 1.000
MON 0.200*** 0.164** 0.050 1.000
SIZE -0.108 -0.307*** 0.106 0.120* 1.000
LEV 0.274*** 0.323*** -0.132** 0.122* -0.215*** 1.000
ROV -0.294*** -0.42*** 0.203*** -0.071 0.425*** -0.479*** 1.000
B/M 0.073 -0.098 0.111* 0.062 0.274*** -0.153** 0.483*** 1.000
BETA -0.195*** 0.151** 0.002 -0.121* -0.100 -0.064 0.092 0.234***
***, **, and * indicate significance at the 1%, 5%, and 10% levels, respectively, for two-tailed tests.
5.2 Regression Analysis
Panel A of Table 4 reports the regression results for H1. The coefficients of EVENTt in
model (1) are positive at a significance level of 10% for both window (-5, +5) and window
(-2, +2). This means that the cumulative abnormal return of the equally weighted portfolio
of the sample listed private firms is significantly positive after it is adjusted for the average
return of the estimation window. Similarly, the coefficient of EVENTt in model (2) is
marginally positively significant over window (-5, +5) at the level of 10.5% and is
positively significant over window (-2, +2) at the level of 5%. The results of Panel A support
H1 and indicate that investors anticipate that the promulgation of Opinions (2005) can
effectively help private firms gain access to regulated monopoly industries and therefore
assign a higher short-term market value to listed private firms.
In order to further exclude the impact of other events in the same window period, we
also study market reactions to all state-owned firms and to state-owned firms which have
entered monopoly industries. The regression results are presented in panels B and C of Table
4 respectively. The coefficients of EVENTt in model (1) and model (2) are both insignificant
for the two samples of state-owned firms over windows (-5, +5) and (-2, +2). The results
Institutional Environment, Deregulation, and Market Reaction 17
effectively exclude the impact of other events and confirm that the significantly positive
market reaction to listed private firms is caused by the promulgation of Opinions (2005).
Table 4 Regression Results for Hypothesis 1
Panel A Listed Private Firms
Event Window (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.062*
(1.71)
0.065
(1.64)
0.026*
(1.89)
0.025**
(2.16)
RETURN_HKt 0.200***
(4.13)
0.205***
(4.03)
Constant -0.004***
(-3.95)
-0.004***
(-4.16)
-0.003***
(-3.06)
-0.003***
(-3.23)
Adj R2 0.31% 8.15% 0.29% 7.34%
Obs. 210 201 210 201
Panel B State-Owned Firms
Event Window (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.022
(0.54)
0.025
(0.56)
0.011
(0.65)
0.010
(0.70)
RETURN_HKt 0.207***
(3.90)
0.206***
(3.88)
Constant -0.002
(-1.54)
-0.002***
(-1.67)
-0.002
(-1.52)
-0.002
(-1.62)
Adj R2 0.01% 7.00% 0.01% 7.00%
Obs. 210 201 210 201
Panel C State-Owned Firms in Monopoly Industries
Event Window (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.002
(0.06)
0.005
(0.11)
0.010
(0.59)
0.01
(0.63)
RETURN_HKt 0.195***
(3.73)
0.195***
(3.73)
Constant -0.002
(-1.51)
-0.002
(-1.63)
-0.002
(-1.57)
-0.002
(-1.67)
Adj R2 0.01% 6.30% 0.01% 6.40%
Obs. 210 201 210 201
***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively, for two-tailed tests. Values in parentheses are T values, and standard errors are clustered by firm.
Table 5 reports the regression results for H2. Panel A reports the results for the
portfolio time-series regression. The coefficient of EVENTt ( 1 ) is significantly greater than
0 for windows (-5, +5) and (-2, +2) at the 1% and 5% levels, respectively. This means that
the cumulative abnormal return of the equally weighted portfolio of listed private firms
18 Li, Zeng, Zou, Wang, and Hao
which have entered regulated monopoly industries is significantly larger than that of the
firms which have not. Panel B reports the regression results for CAR. The coefficient of
MON is significantly greater than 0 for windows (-5, +5) and (-2, +2) at the 5% significance
level, meaning that the cumulative abnormal return of listed private firms which have
entered regulated monopoly industries is significantly larger than that of the firms which
have not. The results of both tests are consistent and support H2a. This indicates that the
first-mover advantage effect dominates the competition effect upon the promulgation of
Opinions (2005), and hence listed private firms which have entered regulated monopoly
industries have better performance.
Table 5 Regression Results for Hypothesis 2
Panel A: Results for Portfolio Time-Series Regression Event Window (-5, +5) (-2, +2)
EVENTt 0.032***
(3.51)
0.015**
(2.39)
RETURNt -0.115***
(-3.09)
-0.115***
(-3.09)
Constant -0.001
(-1.5)
-0.001
(-1.37)
Adj R2 6.67% 6.21%
Obs. 210 210
Panel B: Regression Results for CAR
Event Window (-5, +5) (-2, +2)
MON 0.032**
(2.57)
0.010**
(2.00)
SIZE -0.028***
(-3.10)
-0.004
(-0.97)
LEV 0.013
(1.24)
0.005
(1.15)
ROV -0.277***
(-4.52)
-0.115***
(-4.79)
B/M 0.053***
(3.39)
0.036***
(5.07)
BETA -0.044***
(-2.65)
-0.024***
(-3.20)
Constant 0.650***
(3.48)
0.086
(1.06)
Industry Effect Yes Yes
Adj R2 30.27% 19.51%
Obs 223 223
***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively, for two-tailed tests. Values in parentheses are T values, and standard errors are clustered by firm.
Institutional Environment, Deregulation, and Market Reaction 19
5.3 Subsample Tests
5.3.1 Political Connections and Market Reaction to Deregulation Policy
Studies have found that political connections increase the firm value of private firms by
helping them to obtain financing facilities, crisis relief, and government contracts (Shi and
Xu, 2009). In the process of China’s economic transformation, firms with different types of
ownership are facing unfair competition due to government interventions and market
imperfections (Wen, 2002). Therefore, in order to achieve better performance, private firms
usually establish political connections in order to bypass the entry barriers set up by the
government for profitable monopoly industries. Wang and Shi (2005) and Luo and Liu
(2009) find that private firms with political connections are more likely to enter high-barrier
industries, and thus their performance improves significantly. These studies indicate that
political connections can serve as an informal institutional mechanism to help private firms
gain access to regulated monopoly industries in China, where “guanxi” (the dependence on
social networks) plays an important role. However, as Xu et al. (2013) find out, political
connections are a double-edged sword which brings a burden as well as benefit to firms.
Under the same circumstances, political connections will amplify the risk of government
interventions that affect firms.
When Opinions (2005) was promulgated, did political connections significantly affect
listed private firms which had or had not entered regulated monopoly industries? Since the
government has legal authorities to regulate market access, listed private firms must obtain
permission from the government in order to enter regulated monopoly industries, especially
before the promulgation of Opinions (2005). Therefore, listed private firms with political
connections could have certain advantages when they try to enter regulated monopoly
industries. However, the promulgation of Opinions (2005) reduces the legal entry barriers of
regulated monopoly industries and hence reduces the value of political connections for listed
private firms as the benefits of using political connections to gain access to regulated
monopoly industries have weakened. Meanwhile, although the promulgation of Opinions
(2005) reduces the legal entry barriers to regulated monopoly industries, the rules of the
game are still held in the hands of the government departments, and they can still use the
glass door and the spring door to prevent listed private firms from entering regulated
monopoly industries, or even selectively support politically connected firms to enter
regulated monopoly industries. The ambiguity of policy terms is also likely to encourage
private firms to actively use political connections to increase their chances of entering
monopoly regulated industries.
Therefore, the role of political connections in helping listed private firms to enter
regulated monopoly industries may change after the promulgation of Opinions (2005). On
the one hand, since political connections could help private firms to enter regulated
20 Li, Zeng, Zou, Wang, and Hao
monopoly industries and to have access to key resources, listed private firms with political
connections will receive a greater positive market reaction. On the other hand, since the
promulgation of Opinions (2005) could alleviate the market access restrictions of regulated
monopoly industries for private firms, political connections are unable to bring additional
value to them and hence will not cause significantly positive market reactions. Serving as an
informal institutional mechanism, political connections are a beneficial complement when a
formal institutional mechanism is absent. It is an empirical question whether political
connections can cause different market reactions between private firms which have entered
monopoly industries and firms which have not when a formal institutional mechanism is
formed upon deregulation.
Table 6 reports the results of political connections and market reactions to the
deregulation policy. Panel A reports comparisons of CAR over window (-5, +5), and Panel B
reports comparisons of CAR over window (-2, +2). The results indicate that for private firms
which have entered regulated monopoly industries, the CAR of firms with political
connections is not significantly different from that of firms without political connections
over both window (-5, +5) and window (-2, +2); for private firms which have not entered
regulated monopoly industries, the CAR of firms with political connections is significantly
lower than that of firms without political connections over both window (-5, +5) and
window (-2, +2). This means that after the deregulation, political connections have no
impact on the firm value of listed private firms which have entered regulated monopoly
industries but have a negative impact on those firms that have not entered monopoly
industries. There are two possible explanations for such results. First, since the promulgation
of Opinions (2005) can help private firms gain access to regulated monopoly industries, the
benefit of using political connections to gain access to these industries and key resources has
diminished, hence the negative impact of political connections, such as government
intervention, has become prominent. Second, for listed private firms which have not entered
regulated monopoly industries, their political connections are not voluntarily established by
themselves but are more likely to be imposed by the government for rent-seeking purposes
(Li et al., 2008; Chen et al., 2013). Therefore, this type of political connections could not
bring additional value to private firms after the promulgation of Opinions (2005).
Table 6 Political Connections and Market Reaction to Deregulation Policy
Panel A: Mean Comparisons of CAR over Window (-5, +5) MON = 1 MON = 0 Difference
PC = 1 0.540 0.503 0.037* (0.054)
PC = 0 0.553 0.523 0.030** (0.036)
Difference -0.013 (0.487)
-0.020*
(0.080)
Institutional Environment, Deregulation, and Market Reaction 21
Panel B: Mean Comparisons of CAR over Window (-2, +2) MON = 1 MON = 0 Difference
PC = 1 0.056 0.043 0.013* (0.097)
PC = 0 0.065 0.055 0.010
(0.128) Difference -0.009
(0.288) -0.012** (0.026)
***, **, and * indicate significance at the 1%, 5%, and 10% levels, respectively, for two-tailed tests. Values in parentheses are p values.
5.3.2 Institutional Environment, Political Connections, Market Entry Level, and
Market Reaction to Deregulation Policy
Since China is in the phase of economic transformation, the institutional environment
varies widely across regions. Considering this institutional feature, we rank all the regions
according to the average overall score based on the Fan Gang Marketisation Index from
1999 to 2005. If a region is among the top 25%, it is a region with a strong institutional
environment, otherwise it is a region with a weak institutional environment. Among all the
sample firms, we have 133 firms located in strong institutional environments and 90 firms in
weak institutional environments. We then run a regression for each subsample to further
investigate how political connections affect market reaction towards different firms in
regions with different institutional environments. Table 7 reports the results. After
controlling for factors such as firm size and leverage, the coefficient of the interactive term
PC*MON is significantly negative over the period (-5,+5) in a weak institutional
environment, indicating that political connections significantly reduce cumulative abnormal
returns for listed private firms which have entered regulated monopoly industries. However,
the joint F-test shows that the interactive term (PC*MON) plus MON(MON + PC*MON) is
not significantly different from zero, indicating that for politically connected private firms in
a weak institutional environment, the promulgation of Opinions (2005) does not affect their
short-term market value no matter whether they have entered regulated monopoly industries
or not. Li et al. (2008) divide political connections into two kinds: voluntary political
connections and reluctant political connections. Voluntary political connections are more
consistent with the model of firms seeking rents from government/politicians such as
government subsidiaries and bailouts, better property rights protection, and more financing
channels. As a result, voluntary political connections are likely to increase firm value.
Reluctant political connections are more consistent with the model of
government/politicians seeking rents from firms, for example, by fulfilling their own
political and social objectives such as employment, tax revenues, and social stability or even
seeking personal economic benefits. Therefore, reluctant political connections are likely to
decrease firm value, and this effect is stronger in a weak institutional environment. Our
22 Li, Zeng, Zou, Wang, and Hao
regression results show that the political connections of private firms are more likely to be
the reluctant type in a weak institutional environment (Li et al., 2008; Chen et al., 2013).
Even though they have entered regulated monopoly industries, they do not have first-mover
advantages in either technologies or resources because they are facing more administrative
interventions and bearing a heavier political burden. Therefore, investors do not expect these
firms to use incumbent advantages and connected resources to increase firm value after the
promulgation of Opinions (2005).
In contrast, after controlling for factors such as firm size and leverage, the coefficient
of the interactive term PC*MON is significantly positive over period (-5,+5) in a strong
institutional environment, indicating that political connections significantly increase
cumulative abnormal returns for listed private firms which have entered regulated monopoly
industries. The political connections of private firms are more likely to be voluntary in a
strong institutional environment (Li et al., 2008). They establish first-mover advantages
through political connections and can further strengthen their competitive advantages in
technologies and resources. Therefore, investors expect these firms to use first-mover
advantages to increase firm value after the promulgation of Opinions (2005).
Table 7 Institutional Environment, Political Connections, Market Entry Level, and Market Reaction to Deregulation Policy
Weak Institutional Environment Strong Institutional Environment (-5, +5) (-2, +2) (-5, +5) (-2, +2)
MON 0.062**
(2.21) -0.002
(-0.20) 0.028
(1.49) 0.011
(1.21)
PC 0.020
(1.09) -0.011
(-1.32) -0.029
(-1.59) -0.012
(-1.47)
PC*MON -0.088**
(-2.21) 0.007
(0.47) 0.048*
(1.70) 0.011
(0.88)
SIZE -0.036***
(-3.24) 0.003
(0.39) -0.028**
(-2.17) -0.007
(-1.16)
LEV -0.001
(-0.05) 0.008
(1.60) 0.010
(0.67) 0.001
(0.20)
ROV -0.295***
(-3.63) -0.109***
(-3.31) -0.254**
(-2.28) -0.116***
(-2.66)
B/M 0.026
(1.04) 0.037***
(3.19) 0.070***
(3.17) 0.043***
(3.95)
BETA -0.038
(-1.46) -0.030**
(-2.53) -0.034
(-1.52) -0.023
(-2.09)
Constant 0.729***
(3.19) -0.027
(-0.204) 0.418
(1.45) 0.100
(0.72) Industry Effect Yes Yes Yes Yes Adj R2 52% 39.9% 44% 33.4% Obs 90 90 133 133 MON + PC*MON = 0
0.50 0.19 - -
***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively, for two-tailed tests. Values in parentheses are T values, and standard errors are clustered by firm.
Institutional Environment, Deregulation, and Market Reaction 23
VI. Conclusions
In this paper, we use an event study to examine market reaction to the promulgation of
the Opinions of the State Council on Encouraging, Supporting and Guiding the
Development of the Individual, Private and Other Non-public Sectors of the Economy (2005)
as reflected in the stock prices of listed private firms. The results indicate that (1) listed
private firms around the promulgation date receive significantly positive market reactions;
(2) listed private firms which have entered the regulated monopoly industries have larger
positive market reactions than those firms which have not; and (3) in regions with a strong
institutional environment, political connections bring extra positive market reactions to
listed private firms which have entered the regulated monopoly industries; however, this
effect is not observed in regions with a weak institutional environment. Overall, our findings
provide useful information for understanding the impact of market forces and industry
regulation on the performance of listed private firms from an institutional perspective and
also provide empirical evidence that different institutional factors can affect firm value at
different levels.
Therefore, we should further reform the administrative management system, scale
down or even cancel market access approval procedures, and promote the implementation of
policies actively so as to improve the efficiency of resource allocation. In this paper, we
focus on short-term market reactions because longer-window market reactions may be
contaminated by other events. Since social investment plays an important role at the present
stage of further deepening reform in China, the long-term influence of Opinions (2005) on
private firms could be a possible direction for further research.
“Open Access. This article is distributed under the terms of the Creative Commons Attribution License which permits any use, distribution, and reproduction in any medium,
provided the original author(s) and the source are credited.”
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27
Volume 19, Number 1 – March 2017
C h i n a A c c o u n t i n g a n d F i n a n c e R e v i e w
中 国 会 计 与 财 务 研 究
2017 年 3 月 第 19 卷 第 1 期
制度环境、管制放松与民营企业市场反应
*
李青原 曾姝 邹越 王红建 郝颖1
投稿日:2014 年 1 月 15 日 录用日:2016 年 6 月 14 日 © 作者 2017。本文由香港理工大学以开放取用(open access)方式出版。
摘要
基于制度环境影响企业价值的理论阐释,本文使用事件研究法检验了《国务院关
于鼓励支持和引导个体私营等非公有制经济发展的若干意见(2005)》颁布期间民营上
市公司的市场反应及其影响因素。结果发现:(1)放松“垄断管制”行业使民营企业
股价出现显著正向的市场反应;(2)相较于没有进入“垄断管制”行业的民营上市公
司,制度管制的放松使已经进入“垄断管制”行业的民营上市公司短期股价正向反应
更大;(3)在市场化程度较低地区,制度管制的放松,不会给具有政治关联且已进入
了垄断管制行业的民营企业带来额外的正向市场反应,但在市场化程度较高地区,管
制的放松给具有政治关联且已进入了垄断管制行业的民营企业带来额外的正向市场反
应。上述研究发现对于从制度角度来理解市场力量与行业管制影响民营企业绩效的微
观传导机制具有重要意义,也为不同制度要素影响企业价值的层次差异提供了经验依
据。
关键词:放松管制、市场反应、民营企业、政治关联
* 感谢国家自然科学基金重点项目(71232004)、教育部哲学社会科学研究重大课题攻关项目
(10JZD0019)、国家自然科学基金项目(71272228;71672129;71602069)、教育部新世纪优秀人
才支持计划项目(NECT-120432)、珞珈学者计划和武汉大学 2013 年研究生自主科研项目的资助。
感谢匿名审稿人,以及刘星教授、叶康涛副教授、饶品贵教授、万华林教授、李四海副教授等提
出的宝贵意见。文责自负。 1 通讯作者:李青原,会计学博士(后),武汉大学经济与管理学院会计系教授、博士生导师、系主
任;Email: qyli@whu.edu.cn。曾姝,武汉大学经济与管理学院会计系博士生。邹越,湖北广播电
视台。王红建,暨南大学会计系讲师。郝颖,重庆大学经济与工商管理学院会计系教授、博士生
导师。
28 李青原 曾姝 邹越 王红建 郝颖
一、 引言
政府与市场的关系不仅是经济发展的重要命题,也是企业决策必须面对的制度环境
与约束条件。从中国的改革实践看,在持续与渐进的改革路径下,市场化改革与市场竞
争机制的导入,一直是驱动经济高速增长的重要制度安排(Lin and Liu, 2000;王永钦等,
2007)。经历了 30 多年的经济高增长之后,中国经济发展步入了新的突破阶段,增长模
式的微观基础面临着产业与结构的双重难题。“国有企业守成与改革动力不足”、“民营
企业发展趋缓与制度供给不足”、“重复建设与产业结构升级滞后”等问题日益显现(易
纲和林明,2003;经济增长前沿课题组,2005;杨培鸿,2006)。由此,立足于转型市
场背景下的制度环境阐释市场竞争、行业管制与民营企业发展的传导机制,对于激发经
济增长的微观动力、推动经济转型与结构优化具有重要意义。
由于经济转型过程中的路径依赖与渐进式改革等原因,我国政府先后对关系到国
家经济命脉的行业以行政管制的方式进行控制。通过对垄断行业实行严格的准入管制,
致使国有体系之外的企业无法自由进入,以形成行业壁垒,从而限制行业竞争,达到
支持相关产业发展的目的(Xu, 2011)。为此,我国先后出台了《国务院关于投资体制
改革的决定》(2004)及其附件《政府核准的投资项目目录》(2004)、国家发改委发布
的《企业投资项目核准暂行办法》(2004)等相关法律法规,通过审批及具体行业进入
限制达到对行业进行管制的目的。这些政策的出台,在一定程度上支持了这些行业的
发展,培养了一系列大型企业,增强了这些的产业竞争力。然而,正如 Rawski(2002)
指出,投资体制是中国经济增长的决定因素,而所有制与产业歧视下的投资决策机制
设计,很可能是限制未来中国经济复制改革初始时期高速增长的 主要因素。
因此,要进一步推进改革和发展市场经济,就必须破除行业垄断的藩篱,消除民
营企业在进入垄断管制行业时的“弹簧门”和“玻璃门”现象。2016 年 3 月 22 日,中
央全面深化改革领导小组通过了《关于深化投融资体制改革意见》,强调“深化投融资
体制改革,要确立企业投资主体地位,平等对待各类投资主体,放宽放活社会投资”,“要
完善政府投资体制,发挥好政府投资的引导作用和放大效应,完善政府和社会资本合作
模式”,“要拓宽投资项目资金来源,充分挖掘社会资金潜力”,明确说明了社会投资在
深化改革中的重要作用。其实,我国政府早已意识到行业垄断对产业发展可能带来的
危害,并已经出台了一系列政策减少民营企业进入垄断行业的壁垒。 早的政策是
2005 年 2 月 19 日颁布的《国务院关于鼓励支持和引导个体私营等非公有制经济发展
的若干意见(2005)》(以下均简称《若干意见(2005)》),该意见第一次明确提出贯彻
平等准入、公平待遇原则,放宽非公有制经济市场准入。以该项政策的出台为里程碑,
缓解民营企业进入资源垄断与公共服务领域限制的政策措施始终在持续的完善与落实
进程之中。国务院于 2010 年 5 月 7 日进一步颁布了《国务院关于鼓励和引导民间投资
健康发展的若干意见》(以下简称《若干意见(2010)》),同时于 2010 年 7 月 22 日发
布了《国务院办公厅关于鼓励和引导民间投资健康发展重点工作分工的通知》。为贯彻
落实国务院关于鼓励和引导民间投资健康发展相关实施细则的工作要求,国家发改委
又于 2012 年 2 月 21 日,召集 45 个部门,召开会议推动鼓励和引导民间投资实施细则
制度环境、管制放松与民营企业市场反应
29
落实工作。这些文件的出台,为放松行业管制,促进民营资本进入垄断行业提供了制
度保障,为实现国民经济稳定健康发展奠定了新的基础。此后各部门相继出台了放松
垄断管制具体行业政策。综上可见,作为历史性与标志性的制度设计,《若干意见(2005)》
不仅是新中国成立以来首部以促进非公有制经济发展为主题的政策性文件,吹响了民
营企业向垄断行业进军的号角,而且回溯民营企业近十年来的发展历程,《若干意见
(2005)》具有重大战略意义,2 那么《若干意见(2005)》的颁布是否会因放松进入
垄断管制行业而增加民营企业的价值呢?哪些因素会对民营企业进入垄断管制行业有
影响,进而影响民营企业的价值呢? 这是理论与实务界都迫切需要回答的问题。因此,
本文运用事件研究法,通过《若干意见(2005)》的颁布,利用简化的均衡模型检验了
垄断管制行业的进入与否与民营企业价值间的相关性及其影响因素。同时由于各企业
对《若干意见(2005)》颁布的反应可能有差异,这使得研究者较好地进行横截面和比
较静态检验,减少运用横截面回归时内生性和企业异质性因素的影响(Sefcik and
Thompson, 1986; Angrist and Krueger, 2001)。结果发现:(1)放松“垄断管制”行业使
民营企业股价出现显著正向的市场反应;(2)相较于没有进入“垄断管制”行业的民营
上市公司,制度管制的放松使已经进入“垄断管制”行业的民营上市公司短期股价正
向反应更大;(3)在市场化程度较低地区,制度管制的放松,不会给具有政治关联且
已进入了垄断管制行业的民营企业带来额外的正向市场反应,但在市场化程度较高地
区,管制的放松给具有政治关联且已进入了垄断管制行业的民营企业带来额外的正向
市场反应。这些研究发现,对于从制度角度来理解市场力量与行业管制影响民营企业
绩效的微观传导机制具有重要意义,也为不同制度要素影响企业价值的层次差异提供
了经验依据。
《若干意见(2005)》是新中国第一部以促进非公有制经济发展为主题的政策性文
件,在现阶段全面深化改革的背景下,对它的研究仍然具有较强的理论和现实意义。
本文贡献主要体现在:(1)以《若干意见(2005)》的颁布作为自然实验事件,本文实
证检验了垄断管制行业的进入是否会增加民营企业价值,结果发现垄断管制行业的进
入会增加民营企业的短期市场价值,较好地解决了垄断管制行业进入程度内生性和企
业异质性因素的影响,进一步丰富和拓展了制度环境影响企业价值的相关研究。(2)
本文结合地区制度环境,考察是否已经进入垄断管制行业的民营企业在“放松管制”
过程中政治关联对公司短期市场价值的影响,结果发现民营企业政治关系发挥经济功
能的作用会随着我国地区制度环境而变化,阐释了不同制度要素影响企业价值的层次
差异,增添了新制度经济学框架下的企业效率研究新内涵。
二、 制度环境与假设发展
电力、铁路、石油、烟草、金融、钢铁等垄断管制行业已经成为低效率的代名词,
学者们相继深入研究了行政垄断造成的低效率与经济损失。Abed and Davoodi(2000)
2 全国工商联对《国务院关于鼓励支持和引导个体私营等非公有制经济发展的若干意见》调查问卷
的分析报告:http://www.sdpc.gov.cn/fgyzjj/t20050930_44473.htm,2005/09/30。
30 李青原 曾姝 邹越 王红建 郝颖
认为在一个介于市场经济体制和计划经济体制的制度环境中,行政垄断可能会更容易
地导致掌握公共权力的微观个体与垄断厂商进行共同的设租、寻租,这将引发腐败,
造成竞争机制受到压制,从而扭曲了资源配置效率。过勇和胡鞍钢(2003)、姜付秀和
余晖(2007)、严海宁和汪红梅(2009)、于良春和张伟(2010)等研究均发现行政垄
断会导致更高的市场价格,使得在位企业不需要通过技术创新获得超额利润,不仅造
成了严重的效率损失,而且制约着我国企业技术创新水平与产业竞争力的提升。此外,
行政垄断致使行政机关拥有法定的权力对行业市场准入进行管制,从而引发严重的腐
败行为和大量的地下经济活动(Djankov et al., 2002)。
虽然以高利润、低效率和低创新为特征的国有垄断企业在我国国民经济中占据着
控制地位,但改革开放 35 年以来民营经济已经发展成为我国经济体系的重要组成部分,
并涌现出了一批在资金、技术和管理水平上具有雄厚实力的优秀企业,如阿里巴巴、
华为、百度、江苏沙钢、苏宁电器和大连万达等。虽然我国民营企业取得了长足的发
展,但其主要集中在一般竞争性产业,较少进入垄断产业(陈斌等,2008)。可见,由
于民营企业所处的产业竞争比较激烈,它们有非常强的动机进入垄断管制行业寻求更
低的竞争压力和更高的收益。罗党论和刘晓龙(2009)发现进入垄断管制行业的民营
上市公司业绩明显好于未进入垄断管制行业的民营上市公司,且业绩好坏与进入程度
成正比。因此,如果市场预期《若干意见(2005)》的颁布能使民营企业自由进入垄断
管制行业,那么《若干意见(2005)》的颁布将会引起民营上市公司正向的市场反应。
但是,《若干意见(2005)》没有明确细化民间投资的进入范围及未放宽民间投资的方
式等,导致该文件中一些政策措施较为模糊,进而使得地方和部门在政策安排、实际
操作和具体执行上,设置形形色色的“玻璃门”、“弹簧门”。3 调查发现,目前全社会
80 多个行业,允许外资进入的有 62 个行业,允许民间资本仅 41 个,民间投资在传统
垄断行业和领域所占比重仍非常低。4 因此,如果市场投资者事前理性预期到地方和部
门实施《若干意见(2005)》中“上有政策,下有对策”式的道德风险,那么《若干意
见(2005)》的颁布将不会引起民营上市公司正向的市场反应。
本文以 2005 年 2 月 19 日国务院颁布的《若干意见(2005)》为考察背景,研究放
松进入管制对民营上市公司市场反应的影响。如果市场投资者认为《若干意见(2005)》
的颁布有利于民营企业进入垄断管制行业,增加它们的价值,那么投资者将对垄断行
业的“放松管制”政策持积极态度,从而在《若干意见(2005)》颁布期间,民营上市
公司会有更高的正超额累计回报率;相反,如果市场投资者认为该政策的颁布不能实
质性放宽非公有制经济市场准入,则市场反应平淡甚至可能为消极反应。因此,本文
提出第一个研究假设 H1:
H1:如果市场投资者认可垄断行业的“放松管制”政策,那么在《若干意见(2005)》
颁布期间民营上市公司股价将出现显著正向的市场反应;反之,资本市场反应平淡或出现
3 李丽辉,欧阳洁,“民企在部分地区和部门受到排挤”,《人民日报》,2009 年 10 月 26 日。 4 国家发展改革委负责人就《国务院关于鼓励和引导民间投资健康的若干意见》答记者问,《财经网》,
2010 年 05 月 14 日。
制度环境、管制放松与民营企业市场反应
31
显著的负面市场反应。
中国民营企业进入垄断性行业,往往会遇到“两扇门”的困扰。一扇是“玻璃门”,
即“看得见,没有显性障碍,但由于隐性障碍却无法进入”,用来比喻民营企业本来在
行业准入方面除去法律中明确禁止的投资领域外都可以进入,但却由于相关部门设置
的重重障碍无法进入的现象;另一扇是“弹簧门”,即“刚刚把脚挤进去,又被弹出来”,
特别指民间投资刚刚涉足某一行业领域,又被一些硬性政策“弹出”的现象。《若干意
见(2005)》的颁布虽然不能完全解决“两扇门”的问题,但在中央的政策导向下民营企
业的这两种困扰均能得到部分的缓解。近年来,随着市场化的改革,某些政府管制的行
业逐渐允许民营资本进入,而且统计发现 19.3%的民营上市公司已经进入垄断管制行
业。对于这些企业而言,“玻璃门”的障碍已经越过,但“弹簧门”的威胁仍然存在,
因此《若干意见(2005)》的颁布对它们而言也是一种利好的消息。根据创业导向理论,
先进入企业更可能获得先动优势与更高的经营绩效(杜运周等,2008),这是因为先进
入企业往往可能在技术、资源、品牌、文化、经验乃至市场等方面获得先动优势(Miller
and Friesen, 1983; Lumpkin and Dess, 1996; Lieberman and Montgomery, 1998),从而会
给后进企业形成一种壁垒,有助于先入企业保持更高的回报率。显然,相较于没进入
垄断管制行业的民营企业上市公司,已进入垄断管制行业的民营上市公司预期可能会
有更好的业绩表现。另一方面,《若干意见(2005)》的颁布对于尚未进入垄断行业的民
营企业而言,缓解了“玻璃门”的困扰,可能对已经进入垄断行业的民营企业产生竞争效
应。而且相对于先进入企业,后进入者也可能因较晚进入垄断管制行业而具有后发优
势,比如免费搭乘,通过观察垄断管制行业的先进入企业行动及效果来减少自身面临
的不确定性等等,从而可能获得更高的经营绩效(Lieberman and Montgomery, 1998),
对先进入的企业构成竞争威胁。那么《若干意见(2005)》颁布后,对于民营企业而言,
市场预期先发优势和竞争效应哪个具有更强的作用呢?这仍是一个需要本文进一步实
证检验的问题。如果市场预期先发优势占主导,已经进入垄断管制行业的民营上市公
司股价正向反应会更大;如果市场预期后竞争效应占主导,没有进入垄断管制行业的
民营上市公司股价正向反应会更大。据此,本文提出两个对立的竞争性假设:
H2a:《若干意见(2005)》颁布期间,相较于没有进入垄断管制行业的民营上市
公司,已经进入垄断管制行业的民营上市公司短期股价正向反应更大。
H2b:《若干意见(2005)》颁布期间,相较于已经进入垄断管制行业的民营上市
公司,没有进入垄断管制行业的民营上市公司短期股价正向反应更大。
三、 研究设计
由于《若干意见(2005)》颁布会同时影响样本公司,且研究的事件窗口期和事件
日均相同,此时运用投资组合的时间序列回归模型(portfolio time-series regression)能
提供一种回归系数的无偏估计,以全部消除截面的异方差和相关性(Sefcik and
32 李青原 曾姝 邹越 王红建 郝颖
Thompson, 1986)。Berkman et al.(2010)使用投资组合的时间序列回归发现了中国证
监会出台更强的投资者保护政策后,市场在总体上只有相当微弱的积极反应。因此,
对于假设 H1,沿用 Sefcik and Thompson(1986)、Berkman et al.(2010)的模型设计,
本文使用投资组合的时间序列回归模型(portfolio time-series regression)。具体而言,
将样本民营上市公司的股票收益率使用等权平均法构造成一个投资组合,然后使用模
型(1)进行回归,观察事件窗口期内的投资组合收益率是否显著异于整个估计窗口的
投资组合平均收益率。本文选用的估计窗口是以事件发生日(2005 年 1 月 12 日)为 0
窗口的(-199, +10)共 210 个交易日,5 事件窗口期选用了两种,一种是以事件发生
日为 0 窗口的(-2, +2)共 5 个交易日,另一种是以事件发生日为 0 窗口的(-5, +5)
共 11 个交易日。模型设计如下:
ttt EVENTRETURN 10 (1)
式(1)中, tRETURN 表示样本民营上市公司按照等权平均法组成的投资组合在
t 日的收益率;EVENTt 是一个虚拟变量,当 t 处在事件的窗口期(-2, +2)或(-5, +5)
内的时候,取值为窗口期长度的倒数,若不在事件窗口期内,取值为 0; t 表示 t 日
的独立同分布的随机误差项。若 1 显著为正,则说明市场投资者认为该“放松管制”
政策能有效降低民营企业进入垄断管制行业的壁垒;若 1 显著为负或不显著,则说明
市场投资者不认为该“放松管制”政策能有效降低民营企业进入垄断管制行业的壁垒。
其次,作为稳健性检验,我们在式(1)中加入了恒生中国企业指数(HSCEI)作
为控制变量,来控制宏观环境的变动。《若干意见(2005)》的颁布不仅仅会对民营企
业产生正面影响,也会加剧市场的竞争,导致国有企业利益受损,因而可能导致国有
企业的股票收益率显著下降。考虑到内地股市存在“齐涨齐跌”的现象,系统性风险
在整个市场风险中占比很高(王永宏和赵学军,2001),国有上市公司与民营上市公司
间股票价格会相互影响,所以我们使用 HSCEI 代替国内股票指数来控制宏观影响因素。
HSCEI 反映了在香港交易所上市的 H 股中较大型股的表现。这些公司的股票收益率能
够反映出宏观环境的变化,同时这些公司受系统性风险的影响较小,而且由于在不同
交易所进行交易,与民营上市公司股票间的相互影响也较小。我们使用模型(2)进行
回归,回归所用事件窗口和估计窗口均与模型(1)相同。模型设计如下:
_ (2)
式(2)中, tRETURN 、EVENTt、 t 的定义与式(1)中相同, _ 表
示 HSCEI 在 t 日的收益率。6 若 1 显著为正,则说明市场投资者认为该“放松管制”
5 《若干意见(2005)》的颁布经历了两个阶段:2005 年 1 月 12 日,国务院常务会议讨论并原则通
过;2005 年 2 月 19 日,国务院正式颁布。因为国务院常务会议讨论并原则通过时已经将该政策的
主要信息发布出来,所以我们选择该日作为事件发生日。 6 _ ( )/ , 表示 HSCEI 在 t 日的价格。
制度环境、管制放松与民营企业市场反应
33
政策能有效降低民营企业进入垄断管制行业的壁垒;若 1 显著为负或不显著,则说明
市场投资者不认为该“放松管制”政策能有效降低民营企业进入垄断管制行业的壁垒。
对于假设 H2,本文使用了两种方式进行检验,一种仍沿用 Sefcik and Thompson
(1986)、Berkman et al.(2010)的模型设计,使用投资组合的时间序列回归进行。首
先建造一个投资组合,“买入”已经进入垄断管制行业的民营上市公司,“卖出”没有
进入垄断管制行业的民营上市公司,然后使用模型(3)进行时间序列回归,且仍采用
模型(1)的事件窗口期和估计窗口期的区间。模型(3)具体如下:
tttMONt RETURNEVENTNONRMONRt
210)(|)( (3)
式(3)中, )( tMONR 表示已经进入垄断管制行业的民营上市公司按照等权平均
法构造的投资组合在 t 日的收益率, )(tMONNONR 表示没有进入垄断管制行业的民
营上市公司按照等全平均法构造的投资组合在 t 日的收益率; 1 表示事件窗口期内,
已经进入垄断管制行业的民营上市公司与没有进入垄断管制行业的民营上市公司累计
异常收益率差异间的估计值。若 1 显著为正,则说明先进入垄断管制行业的民营上市
公司相较于没有进入垄断管制行业的民营上市公司在《若干意见(2005)》颁布后,拥
有更多的优势;若 1 显著为负,则说明未进入垄断管制行业的民营上市公司相较于已
经进入垄断管制行业的民营上市公司在《若干意见(2005)》颁布后,拥有更多的优势。
另一种方法是估计出两个事件窗口期内样本企业的 CAR,然后使用 小二乘法对
样本企业是否进入垄断管制行业进行回归。Calomiris et al.(2010)采用这种方法研究
发现中国政府宣布国有股份私有化时,国有股份比例与宣告期内公司累计异常收益率
负相关。李常青等(2010)也采用这种方法研究发现当证监会发布“半强制分红政策”
的政策时,计划再融资、高成长低自由现金流、高竞争低自由现金流的上市公司市场
反应显著较差。模型(4)具体如下:
ii XMONCAR (4)
式(4)中,CAR 表示样本公司在事件窗口期内的累计异常收益率;7 MON 表示
样本公司是否已进入垄断管制行业,如果该公司已经进入垄断管制行业,则取值为 1,
否则为 0; 表示在事件窗口期内,已经进入垄断管制行业和没有进入垄断管制行业
的公司 CAR 间的差异估计值; iX 是一些控制变量; 表示残差。若 显著为正,则
说明先进入垄断管制行业的民营上市公司相较于没有进入垄断管制行业的民营上市公
司在《若干意见(2005)》颁布后,由于拥有先发优势而正向市场反应更大;若 显著
为负,则说明未进入垄断管制行业的民营上市公司相较于已经进入垄断管制行业的民
7 我们使用了CPMA模型来计算累计异常收益率,估计窗口期为以2005年1月12日为0窗口的(-210,
-31)共 180 个交易日,先算出各支股票在估计窗口期的 β系数,然后估计出事件窗口期内的收益
率,再与实际收益率比较得出异常收益率, 后将窗口期内的异常收益率相加之后得出累计异常
收益率。此处我们使用的收益率仍然是考虑现金红利再投资的日个股回报率,事件窗口期有两个,
分别是以事件发生日为 0 窗口的(-2, +2)或者(-5, +5)。
34 李青原 曾姝 邹越 王红建 郝颖
营上市公司在《若干意见(2005)》颁布后,由于竞争效应而正向市场反应更大。
借鉴 Ayers et al.(2002)、Lang et al.(2000)、李常青等(2010)及 Calomiris et al.
(2010)的研究,本文将公司规模(SIZE,前一个会计年度期末即 2004 年 12 月 31
日上市公司的总市值的自然对数)、负债水平(LEV,2004 年末的总负债除以 2004 年
12 月 31 日时上市公司的总市值)、盈利能力(ROV,上市公司 2004 年度扣除非经常
性损益之后的净利润除以上市公司在 2004 年期末的总市值)、账面价值-市场价值比率
(B/M,2004 年期末的账面权益价值除以 2004 年 12 月 31 日上市公司的市场价值)、
风险(BETA,2005 年 1 月 4 日8 回溯前 50 个有效交易日期间,个股收益率与其所在
股票市场收益率回归所得的回归系数)、行业虚拟变量(IND,以证监会行业分类标准
进行划分,其中制造业按二级子行业划分,共设置 19 个行业虚拟变量)确定为控制变
量。同时对除虚拟变量以外的因变量、自变量和控制变量都进行了 winsorize 的 1%处
理。此外,账面价值-市场价值比率及风险有 3 个样本数据是缺失的,本文使用中位数
来代替。
进一步检验中是检验已经进入与尚未进入垄断管制行业的民营企业政治关联对它
们价值的作用差异,因此只能使用以 CAR 为因变量的模型进行检验,回归模型(5)
如下:
ii XPCMONPCMONCAR *3210 (5)
式(5)中,CAR 表示样本公司在事件窗口期内的累计异常收益率;MON 表示样
本公司是否进入垄断管制行业,如果该公司已经进入垄断管制行业,则取值为 1,否
则为 0;PC 表示样本公司的政治关联,如果该公司有政治关联,则取值为 1,否则为
0。 32 表示进入垄断管制行业的民营上市公司中,有政治关联与没有政治关联的
民营上市公司在事件窗口期内累计异常收益率的差异; 2 表示没有进入垄断管制行业
的民营上市公司中,有政治关联与没有政治关联的民营上市公司在事件窗口期内累计
异常收益率的差异。ε 表示残差。变量定义详见表 1。
表 1 变量定义
变量名称 定义
RETURNt 市场收益率 样本民营上市公司按照等权平均法组成的投资组合在t 日的收益率。
EVENTt 事件窗 虚拟变量,当 t 处在事件的窗口期(-2, +2)或(-5, +5)内的时候,取值为窗口期长度的倒数;若不在事件窗口期内,取值为 0。
RETURN_HKt HSCEI 收益率 HSCEI 在 t 日的收益率。
CAR (-2, +2) 累计异常收益率 样本公司在事件窗口期(-2, +2)内的累计异常收益率。
CAR (-5, +5) 累计异常收益率 样本公司在事件窗口期(-5, +5)内的累计异常收益率。
8 之所以选用这个日期,是因为该日期是当我们选用 长的事件窗口期,即(-5, +5)时, 早的事
件窗口日前的第一个交易日。
制度环境、管制放松与民营企业市场反应
35
MON 垄断管制行业收入 虚拟变量,如果该公司有垄断管制行业的收入,则取值为 1,否则为 0。
PC 政治关联 虚拟变量,如果该公司有政治关联,则取值为 1,否则为 0。
SIZE 公司规模 2004 年 12 月 31 日上市公司的总市值的自然对数。
LEV 财务杠杆 2004 年末的总负债除以 2004 年 12 月 31 日时上市公司的总市值。
ROV 盈利能力 上市公司 2004 年度扣除非经常性损益之后的净利润除以上市公司在 2004 年期末的总市值。
B/M 市账比率 2004 年期末的账面权益价值除以 2004 年 12 月 31 日上市公司的市场价值。
BETA 风险 2005 年 1 月 4 日回溯前 200 个有效交易日期间,个股收益率与其所在股票市场收益率回归所得的回归系数。
四、 样本选择和数据来源
(一)样本选择
判断上市公司是否为民营企业时,本文使用了 CSMAR 数据库中的中国民营上市
公司数据库(2010 年版),该数据库中详细披露了 2003 年~2009 年间曾经为民营公司
的上市公司,共涉及 694 家公司。由于从非民营企业转变而来的民营上市公司跟国有
企业有着千丝万缕的联系,并不能算作是纯粹的民营企业,同时还考虑有一些民营上
市公司有过国有化的经历,因而将这些民营上市公司从样本中剔除。此外,考虑到金
融业的特殊性,将金融行业的公司也剔除。 终,本文选取的样本公司为在首次公开
发行股票时就是民营企业,且截止到 2004 年底,从未有过国有化经历的非金融业民营
上市公司, 终得到 223 个样本。
(二)政治关联定义和数据来源
考虑数据的可获得性,借鉴 Calomiris et al.(2010)的研究,本文使用上市公司高
管9是否曾经担任过上市公司所在地的市(县)的局长、副局长或者以上级别的政府官
员(不包括曾在中央任职的官员),或者曾经或目前正在担任市级或以上级别的人大代
表或政协委员(不包括全国人大代表或政协委员)作为该公司是否存在政治关联的判
断标准。10 本文所选取的衡量政治关联方式的数据主要从新浪财经的公司高管这一栏
手工收集了高管曾经的任职经历和当选人大代表和政协委员的经历。
(三)其它主要数据来源
9 本文中的高管包括总经理、副总经理、财务总监等高级管理人员,也包括董事长和副董事长。由
于各上市公司高级管理人员职位的设置不同,因而此处难以全部列出来,但在操作过程中,我们
参照的是新浪财经在高管信息栏的列表,此外我们通过用百度搜索高管姓名的方式取得的信息对
新浪财经中高管的信息进行了补充和验证。 10 当我们将上市公司所在地之外和中央的政治关联也包含在我们的定义中时,发现归回模型是不显
著的。这也印证了吴文峰等(2008)和 Fan et al.(2007)等的研究。
36 李青原 曾姝 邹越 王红建 郝颖
1. 垄断管制行业界定和数据来源。本文使用《政府核准的投资项目目录》(2004)
中列出的受到政府管制的行业作为判断标准,根据样本民营上市公司 2004 年年报财务
报告附注内的分行业和分产品收入来判断。如果 2004 年的收入来源中包含垄断管制行
业,则判定其进入了垄断管制行业,反之,则认为其没有进入垄断管制行业。
2. 市场化指数数据来源。本文使用了 1999 至 2005 年樊纲指数各省总体评分的平
均值作为对该省市场化程度的描述。
五、 实证分析
(一)描述性统计和相关性检验
表 2 报告了样本分布情况。其中 Panel A 为行业分布,样本公司在各个行业中的
分布并不均匀,分布在机械、设备、仪表行业的公司 多(14.80%);其次为综合类
(13.90%);接下来依次是医药、生物制品行业(12.11%),纺织、服装、皮毛(9.87%),
信息技术业(9.42%),和石油、化学、塑胶、塑料(8.97%)。处在传播与文化产业的
公司只有一家,且在某些行业,本文的样本中没有一家公司,如采掘业和电力、煤气
及水的生产和供应业。
总体来看,样本中有政治关联的公司占比较高,达到了 41.96%,差不多有一半的
样本公司或通过聘请前政府官员或参选人大代表或政协委员的方式来建立政治关联。
政治关联比例 高的行业为文化与传播行业,为 100%。政治关联比例较高的行业有交
通运输、仓储业,房地产业和木材、家具行业,均为 66.67%,政治关联比例 小的行
业依次是信息技术业(14.29%),食品、饮料业(22.22%),和造纸、印刷业(25.00%),
可见政治关联比例较小的行业均是竞争较为充分的行业,而信息技术业则是高科技行
业。此外,样本中 19.3%的民营企业已进入了垄断管制行业。
表 2 的 Panel B 为样本的地区分布,浙江、广东、江苏和上海的民营上市公司的
数量居于前四位,民营上市公司家数分别为 41、31、23 和 21,该四省的民营上市公
司数量之和占样本总量的比重超过 50%;四川、山东、福建、湖北位居第二梯队,民
营上市公司家数分别为 11、11、10 和 10;剩下省份的民营上市公司数量均不超过 10
家,其中民营上市公司家数 少的是贵州、青海、山西和天津,均只有一家。地区市
场化指数排名前几为的省份依次为广东、浙江、上海、福建和江苏,排名 后的四个
省份分别为青海、甘肃、贵州和新疆。有政治关联的公司比例 高的四个省份为青海、
山西、天津和西藏,均为 100%;而有政治关联的公司比例 低的四个省份分别为重庆、
海南、河北、贵州和甘肃,均为 0.00%。
表 3 报告了变量的相关性检验。结果显示无论在(-2, +2)还是在(-5, +5)的时
间窗口下,CAR 与 PC 均在 1%的显著性水平下负相关,意味政治关联会减少民营上市
公司在事件窗口内的累计异常收益率,初步说明《若干意见(2005)》的颁布会降低进
入垄断管制行业的法律壁垒,弱化民营上市公司通过政治关联获得进入垄断管制行业
的机会,从而降低政治关联对于民营企业的价值。MON 与 CAR 在(-2, +2)的窗口下
在 1%的显著性水平下正相关,而在(-5, +5)的窗口下在 5%的显著性水平下正相关,
制度环境、管制放松与民营企业市场反应
37
表 2 样本分布情况表 Panel A 公司及政治关联的行业分布
行业 公司数量 占样本比例 政治关联公司数 政治关联公司比例 农林牧渔业(A) 6 2.69% 3 50.00% 食品、饮料(C0) 9 4.04% 2 22.22% 纺织、服装、皮毛(C1) 22 9.87% 8 36.36% 木材、家具(C2) 3 1.35% 2 66.67% 造纸、印刷(C3) 4 1.79% 1 25.00% 石油、化学等(C4) 20 8.97% 11 55.00% 电子(C5) 10 4.48% 5 50.00% 金属、非金属(C6) 12 5.38% 7 58.33% 机械、设备、仪表(C7) 33 14.80% 13 39.39% 医药、生物制品(C8) 27 12.11% 10 40.74% 其他制造业(C99) 2 0.90% 1 50.00% 建筑业(E) 5 2.24% 2 40.00% 交通运输、仓储业(F) 3 1.35% 2 66.67% 信息技术业(G) 21 9.42% 3 14.29% 批发和零售贸易(H) 6 2.69% 3 50.00% 房地产业(J) 6 2.69% 4 66.67% 社会服务业(K) 2 0.90% 1 50.00% 传播与文化产业(L) 1 0.45% 1 100.00% 综合类(M) 31 13.90% 13 41.94%
合计 223 100.00% 92 41.96%
Panel B 市场化指数与政治关联的地区分布 地区 地区市场化指数 公司数量 占样本比例 政治关联公司数 政治关联公司比例 安徽 5.83 3 1.35% 1 33.33% 北京 7.26 7 3.14% 2 28.57% 福建 8.13 10 4.48% 2 20.00% 甘肃 3.98 2 0.90% 0 0.00% 广东 9.20 31 13.90% 13 41.94% 广西 5.39 3 1.35% 1 33.33% 贵州 4.02 1 0.45% 0 0.00% 海南 5.66 6 2.69% 0 0.00% 河北 6.13 2 0.90% 0 0.00% 河南 5.52 5 2.24% 4 80.00% 黑龙江 4.71 6 2.69% 3 50.00% 湖北 5.63 10 4.48% 4 40.00% 湖南 5.56 5 2.24% 1 20.00% 吉林 5.09 3 1.35% 1 33.33% 江苏 7.97 23 10.31% 9 39.13% 辽宁 6.59 3 1.35% 2 66.67% 青海 3.08 1 0.45% 1 100.00% 山东 7.00 11 4.93% 5 45.45% 山西 4.74 1 0.45% 1 100.00% 陕西 4.39 4 1.79% 2 50.00% 上海 8.52 21 9.42% 8 38.10% 四川 5.94 11 4.93% 6 54.55% 天津 7.23 1 0.45% 1 100.00% 西藏11 3 1.35% 3 100.00% 新疆 4.05 6 2.69% 1 16.67% 浙江 8.92 41 18.39% 21 51.22% 重庆 6.34 3 1.35% 0 0.00% 合计 223 100.00% 92 41.26%
进入垄断管制行业公司数量 43 占样本比重 18.45%
11 该地区数据缺失。
38 李青原 曾姝 邹越 王红建 郝颖
意味已经进入垄断管制行业的民营上市公司在事件窗口内的累计异常收益率更高,初
步说明已经进入垄断管制行业的民营企业由于具有先发优势,企业市场反应更好。
表 3 变量相关性检验结果
CAR (-2, +2) CAR (-5, +5) PC MON SIZE LEV ROV B/M
PC -0.190*** -0.178*** 1.000
MON 0.200*** 0.164** 0.050 1.000
SIZE -0.108 -0.307*** 0.106 0.120* 1.000
LEV 0.274*** 0.323*** -0.132** 0.122* -0.215*** 1.000
ROV -0.294*** -0.42*** 0.203*** -0.071 0.425*** -0.479*** 1.000
B/M 0.073 -0.098 0.111* 0.062 0.274*** -0.153** 0.483*** 1.000
BETA -0.195*** 0.151** 0.002 -0.121* -0.100 -0.064 0.092 0.234***
注: ***、**、*分别表示参数在 1%、5%和 10%的显著性水平下显著异于零。
(二)回归分析
表 4 Panel A 报告了研究假设 H1 的回归结果。模型(1)的回归结果显示,在(-5,
+5)和(-2, +2)两个窗口期内,《若干意见(2005)》的事件窗口期内,民营上市公司
按照等权平均法组成的投资组合经估计窗口内平均收益率调整后的累计异常收益率在
10%的水平下显著为正;模型(2)的回归结果显示,《若干意见(2005)》的事件窗口
期内,民营上市公司按照等全平均法组成的投资组合经 HSCE 收益率调整后的累计异
常收益率在(-5, +5)窗口期内边际显著(显著性水平为 10.5%),而在(-2, +2)窗口
内在 5%的显著性水平下显著为正。表明市场投资者认为《若干意见(2005)》的颁布
能够有效地帮助民营企业进入垄断管制行业,从而对民营上市公司给予更高的短期市
场价值。
为了进一步排除事件窗口其他事件对市场的影响,我们按照相同的方法分别研究
了所有国有企业和处于垄断行业的国有企业在事件窗口的市场反应,回归结果如表 4
Panel B 和 Panel C 所示。在(-5, +5)和(-2, +2)两个窗口期内,无论是模型(1)还
是模型(2),国有上市公司和处于垄断行业的国有上市公司按照等权平均法组成的投
资组合经估计窗口内平均收益率调整后的累计异常收益率均不显著,较好的排除了其
他事件对市场的影响,说明事件窗口中民营企业的显著的正向市场反应应该是由《若
干意见(2005)》的颁布引起的。
表 5 报告了研究假设 H2 的回归结果:Panel A 显示,在(-5, +5)和(-2, +2)两
个窗口期内, 1 分别在 1%和 5%的显著性水平上大于 0,即已经进入垄断管制行业的
民营上市公司按照等权平均法组成的投资组合比没有进入垄断管制行业的民营上市公
司在事件窗口期内的累计异常收益率显著更大。Panel B 显示,在(-5, +5)和(-2, +2)
两个窗口期内,MON 的系数均在 5%的显著性水平下大于 0,即已经进入垄断管制行
业的民营上市公司比没有进入垄断管制行业的民营上市公司的累计异常收益率显著更
制度环境、管制放松与民营企业市场反应
39
大,两种检验方法均表明在《若干意见(2005)》颁布后,相较于没有进入垄断管制行
业的民营上市公司,已经进入垄断管制行业的民营上市公司具有先发优势,从而具有
更强的正向市场反应,支持了研究假设 H2a。
表 4 假设 H1 的回归结果
Panel A 民营企业
事件窗口 (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.062*
(1.71)
0.065
(1.64)
0.026*
(1.89)
0.025**
(2.16)
RETURN_HKt 0.200***
(4.13)
0.205***
(4.03)
Constant -0.004***
(-3.95)
-0.004***
(-4.16)
-0.003***
(-3.06)
-0.003***
(-3.23)
Adj R2 0.31% 8.15% 0.29% 7.34%
Obs 210 201 210 201
Panel B 国有企业
事件窗口 (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.022
(0.54)
0.025
(0.56)
0.011
(0.65)
0.010
(0.70)
RETURN_HKt 0.207***
(3.90)
0.206***
(3.88)
Constant -0.002
(-1.54)
-0.002***
(-1.67)
-0.002
(-1.52)
-0.002
(-1.62)
Adj R2 0.01% 7.00% 0.01% 7.00%
Obs 210 201 210 201
Panel C 国有企业-垄断行业
事件窗口 (-5, +5) (-5, +5) (-2, +2) (-2, +2)
EVENTt 0.002
(0.06)
0.005
(0.11)
0.010
(0.59)
0.01
(0.63)
RETURN_HKt 0.195***
(3.73)
0.195***
(3.73)
Constant -0.002
(-1.51)
-0.002
(-1.63)
-0.002
(-1.57)
-0.002
(-1.67)
Adj R2 0.01% 6.30% 0.01% 6.40%
Obs 210 201 210 201
注:括号内的数值为 T 值,并经公司层面的 cluster 异方差修正;***、**、*分别表示参数在 1%、5%和 10%的显著性水平下显著异于零。
40 李青原 曾姝 邹越 王红建 郝颖
表 5 假设 H2 的回归结果
Panel A 投资组合回归分析结果
事件窗口 (-5, +5) (-2, +2)
EVENTt 0.032***
(3.51)
0.015**
(2.39)
RETURNt -0.115***
(-3.09)
-0.115***
(-3.09)
Constant -0.001
(-1.5)
-0.001
(-1.37)
Adj R2 6.67% 6.21%
Obs 210 210
Panel B CAR 回归分析结果
事件窗口 (-5, +5) (-2,+2)
MON 0.032**
(2.57)
0.010**
(2.00)
SIZE -0.028***
(-3.10)
-0.004
(-0.97)
LEV 0.013
(1.24)
0.005
(1.15)
ROV -0.277***
(-4.52)
-0.115***
(-4.79)
B/M 0.053***
(3.39)
0.036***
(5.07)
BETA -0.044***
(-2.65)
-0.024***
(-3.20)
Constant 0.650***
(3.48)
0.086
(1.06)
Industry Effect Yes Yes
Adj R2 30.27% 19.51%
Obs 223 223
注:括号内的数值为 T 值,并经公司层面的 cluster 异方差修正;***、**、*分别表示参数在 1%、
5%和 10%的显著性水平下显著异于零。
(三)进一步检验
1. 政治关联与放松管制政策的市场反应
已有研究发现民营企业建立政治关联有利于民营企业获取融资便利性、危机救助、
政府采购合同等,增加公司价值(石晓乐和许年行,2009)。在中国经济的转型过程中,
由于政府的干预和市场的不完备,不同所有制的企业在市场中进行着不公平的竞争(文
玫,2002),同时由于政府对行业准入的严格管制,使得很多暴利性行业的进入壁垒很
高,民营企业会通过建立良好的政治关系来帮助其突破管制性壁垒,以获得更好的企业
绩效。汪伟与史晋川(2005)、罗党论和刘晓龙(2009)研究发现有政治关联的民营上
制度环境、管制放松与民营企业市场反应
41
公司更有可能进入高壁垒行业,进而显著提高企业绩效。这些表明政治关联作为一种非
正式制度,在“关系”起重要作用的中国社会,在民营企业进入垄断管制行业上可能发
挥一定的作用。然而,对于中国的企业而言,政治关联是一把双刃剑,在给企业带来利
益的同时也带来了负担,徐业坤等(2013)发现,在同等条件下,政治关联会放大政府
干预对企业影响的风险。
《若干意见(2005)》颁布时,政治关联对已经或者没有进入垄断管制行业的民营
上市公司的市场反应是否会有显著的影响呢?由于政府部门手中掌握了法定设置行业
准入的权力,特别是《若干意见(2005)》颁布前,民营上市公司若想进入垄断管制行
业必须通过政府行政部门的批准,那么具有政治关联的民营上市公司在进入垄断管制
行业时一定具有某种优势。但是,《若干意见(2005)》的颁布将会降低进入垄断管制
行业的法律壁垒,可能会极大地弱化民营上市公司进入垄断管制行业的壁垒,从而降
低政治关联对民营企业的价值。当然,尽管《若干意见(2005)》的颁布降低了进入垄
断管制行业的法律壁垒,但是由于游戏规则始终掌握在政府的手中,地方和部门可能
仍会通过“玻璃门”、“弹簧门”阻挡民营企业进入垄断管制行业,甚至选择性支持政
治关联企业进入垄断管制行业,同时政策条款的模糊性也仍可能激励企业积极运用政
治关联增加民营上市公司进入垄断管制行业的机会。
由此可见,政治关联便于民营企业进入垄断管制行业的作用在《若干意见(2005)》
发布之后可能会发生变化。一方面,由于政治关联有助于民营企业进入垄断管制行业
并获取关键性资源,那么具有政治关联的民营上市公司市场正向反应更大;另一方面,
由于《若干意见(2005)》的颁布将准许民营上市公司进入垄断管制行业,政治关联对
民营企业进入垄断管制行业及获取关键性资源的作用减弱,政治关联可能不会给公司
带来额外价值,因此不会引起显著的正向市场反应。政治关联作为一种非正式制度,
是在正式制度缺位的条件下一种有益的补充,那么在“放松管制”作为正式制度逐渐
完善之后,对于已经或没有进入垄断管制行业的民营上市公司而言,政治关联能否对
他们造成不同的市场反应,仍是一个有待实证检验的问题。
表 6 报告了政治关联与放松管制政策的市场反应的检验结果。Panel A 与 Panel B
根据是否进入垄断管制行业、是否有政治关联进行组间检验,结果显示:对于已经进
入垄断行业的民营上市公司,其在(-5, +5)和(-2, +2)两个窗口期内有无政治关联
公司的累计异常收益率均未表现出显著性差异;对于尚未进入垄断管制行业的民营企
业,在(-5, +5)和(-2, +2)两个窗口期内,有政治关联的民营上市公司累计异常收
益率显著小于无政治关联的民营上市公司。这些表明放松管制之后,对于已经进入垄
断管制行业的民营上市公司,政治关联不会对其公司价值产生影响,但对于还未进入
垄断管制行业的民营上市公司,政治关联使其累计异常收益率更低,其原因可能有两个。
第一,由于《若干意见(2005)》的颁布将准许民营上市公司进入垄断管制行业,对于
尚未进入垄断行业的民营企业而言,政治关联对它们进入垄断管制行业及获取关键性
资源的有利作用减弱,而使政治关联给企业带来的政府干预的负面作用更加凸显。第
二,未进入垄断管制行业的民营上市公司政治关联可能属于被动施加型,是政府出于自
身利益需要对企业施加的政治关联,目的是满足公共管理的目的而非提高公司价值(Li
42 李青原 曾姝 邹越 王红建 郝颖
et al., 2008;陈艳艳等,2013),因此《若干意见(2005)》颁布后也不能让市场投资者
对这些民营上市公司给予了更高的估值。
表 6 政治关联与放松管制政策的市场反应
Panel A 组间检验(-5, +5) 进入垄断管制行业 未进入垄断管制行业 Difference
有政治关联 0.540 0.503 0.037* (0.054)
无政治关联 0.553 0.523 0.030** (0.036)
Difference -0.013 (0.487)
-0.020* (0.080)
Panel B 组间检验(-2, +2) 进入垄断管制行业 未进入垄断管制行业 Difference
有政治关联 0.056 0.043 0.013* (0.097)
无政治关联 0.065 0.055 0.010
(0.128) Difference -0.009
(0.288) -0.012** (0.026)
注:括号内的数值为对应 p 值, ***、**、*分别表示参数在 1%、5%和 10%的显著性水平下显著异于
零。
2. 市场化进程、政治关联、进入程度与放松管制政策的市场反应
由于中国处于转型经济时期,不同地区的市场化进程差异较大,基于这一特殊的
制度背景,本文使用樊纲(2009)市场化指数按前 25 分位数对地区进行分组,将评分
较高的前 25%的地区划为市场指数较高的地区(有 133 个公司样本),剩下的地区划
为市场化指数较低的地区(有 90 个公司样本)。然后分别对方程(5)进行回归,进
一步考察了在不同程度的市场化地区政治关联与放松管制政策的市场反应。结果见于
表 7。控制公司规模和资产负债率等因素后,在市场化程度较低地区,在(-5, +5)窗
口期内,政治关联和进入垄断管制行业间交叉项(PC*MON)的回归系数显著为负。这
说明在市场化程度较低的地区,政治关联使得民营上市公司通过进入垄断管制行业获
取累计异常收益的效应显著减弱。但是,F 联合检验发现该交叉项与进入垄断管制行
业虚拟变量不显著异于零。这说明在市场化程度低的地区,建立了政治关联的民营企
业,无论其是否进入垄断管制行业,该政策的发布对其短期市场价值的影响没有差异。
Li et al.(2008)将政治联系形成的动机分为两种,一种是主动寻求型,另一种是被动
施加型。主动寻求型的政治联系是企业积极与政府(官员)建立密切联系以获取优惠
政策、政府补贴、更好的产权保护和更多的融资渠道;而被动施加型则是政府(官员)
出于寻租的目的,主动与企业建立联系,以实现就业、税收、社会稳定等政治和社会
目标,以及个人经济利益,而这些动机在市场化程度较低的地区更加强烈。我们的回
归结果显示,在市场化程度较低的地区,样本民营企业的政治关联更可能属于被动施
制度环境、管制放松与民营企业市场反应
43
加型(Li et al., 2008;陈艳艳等,2013),因此拥有政治关联的民营上市公司在垄断管
制行业的先导优势并不明显。进一步,尽管它们通过政治关联进入了垄断管制行业,
但同时也面临着较多的行政干预,承担着较重的政治负担,因而它们未能在技术、资源
等方面形成并拓展竞争优势,因此当《若干意见(2005)》颁布后,市场认为这些具有
政治关联的民营企业并没有能力利用在位优势与关联资源来增加公司价值。
另一方面,在市场化程度较高的地区,控制公司规模和资产负债率等因素后,在
(-5, +5)窗口期内,政治关联和进入垄断管制行业间交叉项(PC*MON)的回归系数
基本显著为正。这说明在市场化程度高的地区,政治关联使得民营上市公司通过进入
垄断管制行业获取累计异常收益的效应显著增强。因此,在市场化程度较高地区,民
营企业的政治关联可能属于主动寻求型(Li et al., 2008)。它们通过政治关联得到了垄
断管制行业的在位优势,而且能在技术、资源等方面扩充与完善竞争优势。因此当《若
干意见(2005)》的颁布后,市场认为这些具有政治关联的民营企业将有能力进一步利
用先发优势以增加公司价值。
表 7 市场化进程、政治关联、进入程度与放松管制政策的市场反应
市场指数较低地区 市场指数较高地区
(-5, +5) (-2, +2) (-5, +5) (-2, +2)
MON 0.062**
(2.21)
-0.002
(-0.20)
0.028
(1.49)
0.011
(1.21)
PC 0.020
(1.09)
-0.011
(-1.32)
-0.029
(-1.59)
-0.012
(-1.47)
PC*MON -0.088**
(-2.21)
0.007
(0.47)
0.048*
(1.70)
0.011
(0.88)
SIZE -0.036***
(-3.24)
0.003
(0.39)
-0.028**
(-2.17)
-0.007
(-1.16)
LEV -0.001
(-0.05)
0.008
(1.60)
0.010
(0.67)
0.001
(0.20)
ROV -0.295***
(-3.63)
-0.109***
(-3.31)
-0.254**
(-2.28)
-0.116***
(-2.66)
B/M 0.026
(1.04)
0.037***
(3.19)
0.070***
(3.17)
0.043***
(3.95)
BETA -0.038
(-1.46)
-0.030**
(-2.53)
-0.034
(-1.52)
-0.023
(-2.09)
Constant 0.729***
(3.19)
-0.027
(-0.204)
0.418
(1.45)
0.100
(0.72)
Industry Effect Yes Yes Yes Yes
Adj R2 52% 39.9% 44% 33.4%
Obs 90 90 133 133
MON + PC*MON = 0 0.50 0.19 - -
注:括号内的数值为对应 T 值, ***、**、*分别表示参数在 1%、5%和 10%的显著性水平下显著异
于零。
44 李青原 曾姝 邹越 王红建 郝颖
六、 结论与启示
本文使用事件研究法对《国务院关于鼓励支持和引导个体私营等非公有制经济发
展的若干意见(2005)》颁布期间民营上市公司的股价反应进行了检验。结果发现:(1)
放松“垄断管制”行业使民营企业股价出现显著正向的市场反应;(2)相较于没有进入
“垄断管制”行业的民营上市公司,制度管制的放松使已经进入“垄断管制”行业的
民营上市公司短期股价正向反应更大;(3)在市场化程度较低地区,制度管制的放松,
不会给具有政治关联且已进入了垄断管制行业的民营企业带来额外的正向市场反应,
但在市场化程度较高地区,管制的放松给具有政治关联且已进入了垄断管制行业的民
营企业带来额外的正向市场反应。上述研究发现,对于从制度角度来理解市场力量与
行业管制影响民营企业绩效的微观传导机制具有重要意义,也为不同制度要素影响企
业价值的层次差异提供了经验依据。因此,应通过进一步深化行政管理体制改革,
大限度地减少和取消核准审批,同时积极推动政策措施的落实,提升资源的配置效率。
本文的研究局限在于仅仅研究了短期的市场反应,因为将研究窗口拉长可能受到其余
事件的影响。社会投资在我国目前所处的深化改革阶段具有重要作用,《若干意见
(2005)》对民营企业的长期影响,是值得进一步研究的方向。
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